Sylvain Chevallier, Igor Carrara, Bruno Aristimunha, Pierre Guetschel, Sara Sedlar, Bruna Lopes, Sebastien Velut, Salim Khazem, Thomas Moreau
Objective. This study conduct an extensive Brain-computer interfaces (BCI) reproducibility analysis on open electroencephalography datasets, aiming to assess existing solutions and establish open and reproducible benchmarks for effective comparison within the field. The need for such benchmark lies in the rapid industrial progress that has given rise to undisclosed proprietary solutions. Furthermore, the scientific literature is dense, often featuring challenging-to-reproduce evaluations, making comparisons between existing approaches arduous. Approach. Within an open framework, 30 machine learning pipelines (separated into raw signal: 11, Riemannian: 13, deep learning: 6) are meticulously re-implemented and evaluated across 36 publicly available datasets, including motor imagery (14), P300 (15), and SSVEP (7). The analysis incorporates statistical meta-analysis techniques for results assessment, encompassing execution time and environmental impact considerations. Main results. The study yields principled and robust results applicable to various BCI paradigms, emphasizing motor imagery, P300, and SSVEP. Notably, Riemannian approaches utilizing spatial covariance matrices exhibit superior performance, underscoring the necessity for significant data volumes to achieve competitive outcomes with deep learning techniques. The comprehensive results are openly accessible, paving the way for future research to further enhance reproducibility in the BCI domain. Significance. The significance of this study lies in its contribution to establishing a rigorous and transparent benchmark for BCI research, offering insights into optimal methodologies and highlighting the importance of reproducibility in driving advancements within the field.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 59.934408990825695 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.013059559739449542 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 25.291020102752295 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 58.55441266055046 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0010041190067889907 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 2.2208920137614676 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 58.458600238532114 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0243752586293578 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 48.31867250642202 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 56.68057317948718 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.330426302205128 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 92.28611607692308 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 55.0438009174312 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002020601044036697 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 3.204224353211009 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 48.51775490825688 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.9742764488073394 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 1190.5449858715597 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 47.73427576146789 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0054728938412844045 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 8.780583234862386 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 46.84880671559633 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.005456309299082569 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 8.482141944036696 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 45.493503000000004 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.06618156533027524 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 68.7581273853211 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 42.96454042201835 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.003281270780733945 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 6.167569839633027 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 41.87124210091743 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.038677560009174314 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 15.891879321100918 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 29.03593889908257 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.024848891426605502 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 10.598362683486238 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 27.682707357798165 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.034966375495412844 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 14.11812210091743 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 26.68615756880734 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.059308609688073395 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 22.783741321100916 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 26.154798385321104 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4149273854862385 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 13.559821752293578 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | Accuracy | 25.790262357798166 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.7750069540733944 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 18.127433243119267 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 64.3835718 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 6.1498658200000005 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 335.21023 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 63.840714199999994 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0319534623 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 34.0226515 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 62.762142 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00205973584 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 2.12094548 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 61.469286499999995 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.014714955200000001 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 15.092744999999999 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 56.9400009 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00332279971 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 3.4260148399999997 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 48.9364276 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 22.743277258 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 100.2113981 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 45.212857299999996 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.030076381000000003 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 37.9020129 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 44.0792858 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.5357583659999999 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 677.4126650000001 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 39.4492859 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0037056161800000003 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 4.84518394 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 38.8442857 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00369364373 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 4.82886682 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 35.3514286 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 10.5262206565 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 34.2388724 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 33.4078569 | MDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00188059405 | MDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 2.01196917 | MDM |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 30.215714 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 35.190156514 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 126.255782 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 25.7807146 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 13.394392257000002 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 43.4866037 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 24.1678569 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 30.440530905000003 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 73.0829022 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | Accuracy | 17.9464288 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 15.281205185 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 47.42458 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 69.79166675 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0013501269012499999 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 2.749322665 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 69.5833345 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.18950154875 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 7.6877846125 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 69.16666637499999 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000786763229625 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.85145594625 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 67.916665875 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00173950673625 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 3.3987408749999997 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 65.62500112500001 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00038144418074999997 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 0.743955544625 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 65 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.005079346375 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 19.6318726375 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 62.91666625 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.03446902725 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 44.612727875000004 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 61.041666500000005 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0005938407575 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.0782176175 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 60.62500012500001 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0003630056075 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 0.6206318012500001 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 60.62499999999999 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000925614838125 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.6782885705 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 50.00000075 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.21283768775 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 12.9602863125 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 43.958333875 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.673163054 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 9.24752825 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 37.708333625 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.1961726155 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 9.8963939375 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 37.7083335 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.546965218875 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 8.58771105 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 36.041667 | EEGITNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.109086602625 | EEGITNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 9.4757763125 | EEGITNet |
| Brain Decoding | AlexandreMotorImagery MOABB | Accuracy | 34.166666875 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.198906455875 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 9.205565762500001 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 77.88163016666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 1.7743017888888888 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 73.50212961111112 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 72.47227177777778 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.394738715 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 45.877247277777776 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 72.38119294444444 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006551190227777778 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 13.852831627777778 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 71.97351649999999 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004666705854444444 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 19.167550810555554 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 70.75586455555556 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01799459135 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 66.23056458333332 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 70.14149394444445 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.014329298037222223 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 59.714323183333335 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 66.88411633333334 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1285738541111111 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 147.7146591111111 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 66.52618122222222 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004104928794444445 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 5.445951 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 66.3070505 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0028627887866666665 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 9.741079583888888 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 65.994152 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010921193731666667 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 52.462251144444444 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 61.600793277777775 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.012491149514444445 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 75.09591532444445 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 60.46380244444445 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1871718811111111 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 21.723354222222223 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 45.61672333333334 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.5342137127777778 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 62.59321944444444 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 41.64616544444444 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.28639946055555554 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 33.0790875 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 35.54681733333334 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1578935777777778 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 18.299775611111112 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | Accuracy | 35.29273355555556 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.15884736222222223 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 18.38852738888889 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 85.85246441666668 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.1941063975 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 7.277364225 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 85.02304108333334 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.21728041750000002 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 24.664789916666667 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 84.87930308333334 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.004125581083333333 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 14.9374373825 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 84.53929741666667 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.025638485455833332 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 75.6071288 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 83.65528725 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.013120034294166666 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 39.13084056666667 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 83.33782725 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.16457950333333335 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 18.622367166666667 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 83.08474258333334 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.04421750124999999 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 129.06390283333334 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 83.07198441666667 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.010749338934166667 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 71.767263065 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 82.9630775 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.008406058218333333 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 46.6342523525 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 82.06140125 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0014094379383333333 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 8.307476150833333 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 81.98970291666666 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00143389045 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 1.8146779000000002 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 76.04754891666667 | MDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0013000749791666668 | MDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 8.044291825 | MDM |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 56.41506 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.29802479833333334 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 34.04211566666667 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 55.691373 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.11693505166666666 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 13.242306708333333 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 50.67784558333334 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.16801267050000002 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 19.01079075 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | Accuracy | 37.193690833333335 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.12480563316666667 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 14.080227958333333 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 85.52905985714287 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.16102813214285713 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 86.77469099999999 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 85.39824135714285 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 20.32321697142857 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 707.9741635714284 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 85.13492092857142 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.612351642857143 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 1877.5478428571428 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 84.59829828571428 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0075348416357142855 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 4.9577661214285715 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 84.41288664285715 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04492253178571428 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 23.104729499999998 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 82.97360807142857 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.09652152407142857 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 61.4208665 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 76.98508007142857 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.9416739878571428 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 214.51948785714285 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 75.93963142857143 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.1834183317857143 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 181.90692642857144 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 75.88554942857144 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.8806029271428572 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 531.3518721428571 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 72.97147700000001 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004620156871428571 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 3.027175342857143 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 72.8150212857143 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004526741521428572 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 2.9170686285714287 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 71.11233471428572 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.0679361071428572 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 471.15728 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 70.44199514285714 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.478115302857143 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 336.80249142857144 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 67.55850299999999 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 4.719508371428572 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 1075.1257621428572 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 56.77987328571429 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.7812169435714285 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 405.86182285714284 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | Accuracy | 52.03144735714286 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.007416166485714286 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 4.819618021428572 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 68.4798674678899 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4211595544036697 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 14.023694665137615 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 68.45973491743119 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0030451742727522933 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 6.395441841284404 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 68.17686030275229 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002011187666788991 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.376171044495413 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 67.9113149174312 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002922431799908257 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 6.133613628073395 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 67.28338431192661 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016746719404036696 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.225256745229358 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 67.2357288440367 | TRCSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002136693423082569 | TRCSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.659003014128441 | TRCSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 65.74796130275229 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0015942293279908256 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.20135004233945 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 65.71304793577983 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0033223538248623855 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 7.022697680733945 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 65.1939347614679 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.6320094714220184 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 12.345875044954127 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 65.07415901834862 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0012151826062018348 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 3.403307553027523 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 62.34913353211009 | LogVar + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016599262179357798 | LogVar + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 3.982814494036697 | LogVar + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 61.938583036697246 | LogVar + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0024540891949541284 | LogVar + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 5.312168379816514 | LogVar + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 59.57492357798165 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.1069343064220183 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 9.95131664587156 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 59.552752311926604 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.5409163972477065 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 12.154883428440368 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 58.44724773394495 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2997174272477064 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 1.6316544247706422 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 55.90341492660551 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8180092174311926 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 13.434462706422018 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 54.75993883486239 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0019827723381192664 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.593253893211009 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 52.70922529357799 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.407468192660551 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 11.497989633027524 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 51.19622834862385 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8861695403669723 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 12.67985970183486 | EEGNeX |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 82.0049287111111 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.02593451466666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.439084654222222 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 80.39444377777778 | FBCSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.14387416055555555 | FBCSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 0.783375099111111 | FBCSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 80.0956668888889 | CSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005452296241333334 | CSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.2460348456222223 | CSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 80.09376537777779 | TS + LR |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006557710575999999 | TS + LR |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.7434176553111111 | TS + LR |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.87291397777778 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006216743171333333 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.8661370398 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.78218279999999 | TRCSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006737686001777777 | TRCSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.457821241711111 | TRCSP + LDA |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.75479504444445 | TS + EL |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0010797430764444445 | TS + EL |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 2.079450579777778 | TS + EL |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.41006457777777 | TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.001196510487111111 | TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 2.356883378 | TS + SVM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.28086771111111 | FgMDM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006603817830888889 | FgMDM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.5159122454666667 | FgMDM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 79.27025824444443 | CSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.004687019133333334 | CSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 6.61830888 | CSP + SVM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 78.50732679999999 | LogVar + LDA |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005384169830822222 | LogVar + LDA |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 1.2824246142888889 | LogVar + LDA |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 78.29806786666667 | LogVar + SVM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0008958152281111112 | LogVar + SVM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 2.0932973742222223 | LogVar + SVM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 77.65547846666666 | MDM |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0003528847734 | MDM |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 0.9042913831777778 | MDM |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 72.35971368888889 | ShallowConvNet |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.05743548577777778 | ShallowConvNet |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 6.921017688888888 | ShallowConvNet |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 72.35753537777777 | DeepConvNet |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.08229932173333333 | DeepConvNet |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 9.503357968888889 | DeepConvNet |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 69.69639757777777 | EEGTCNet |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.12710436082222223 | EEGTCNet |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 15.25518438888889 | EEGTCNet |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 69.498559 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.07430071106666666 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 8.935735724444443 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 66.52779386666666 | EEGNeX |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.10765803022222223 | EEGNeX |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 13.068636999999999 | EEGNeX |
| Brain Decoding | BNCI2014-004 MOABB | AUC-ROC | 65.09554904444444 | EEGITNet |
| Brain Decoding | BNCI2014-004 MOABB | CO2 Emission (g) | 0.09232083362222221 | EEGITNet |
| Brain Decoding | BNCI2014-004 MOABB | training time (s) | 11.108478222222223 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 85.2855546 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.01054370724 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 16.70190309 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 83.835458 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 7.47882039 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 329.502181 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 83.7230547 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.01144170013 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 19.7101636 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 83.6191015 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.007658937971 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 17.19314084 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 80.7190701 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.003059077913 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 5.572459653 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 80.16262729999998 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0042039635710000006 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 8.469146077 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 79.8404006 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0187107375 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 25.68750405 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 79.32908119999999 | TRCSP + LDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.001778520405 | TRCSP + LDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 3.318742769 | TRCSP + LDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 79.0972572 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 7.357279468 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 61.683436400000005 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 78.41374400000001 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00607642027 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 10.29490904 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 76.81202040000001 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.589712181 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 3.2107585999999997 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 74.852519 | LogVar + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00979238033 | LogVar + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 19.02302114 | LogVar + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 74.1323346 | LogVar + LDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.002844444774 | LogVar + LDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 5.320173393999999 | LogVar + LDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 73.6449296 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 2.3282129534 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 34.809638 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 66.4564741 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.7898681898000001 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 19.67945195 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 63.16485980000001 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.5258725022999999 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 28.1203618 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 59.3464601 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 1.1843646793 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 20.2672368 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 58.801497999999995 | MDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.004551940515 | MDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 8.631213726 | MDM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 57.965879799999996 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 2.6715904881 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 42.3490198 | EEGNeX |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 89.2466661 | TS + EL |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.269148976 | TS + EL |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 243.142401 | TS + EL |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 88.0777776 | TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.28341764999999997 | TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 265.222582 | TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 87.60000099999999 | TS + LR |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0139535835 | TS + LR |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 34.60417205 | TS + LR |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 87.42888820000002 | ACM + TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 6.55720808 | ACM + TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 325.665074 | ACM + TS + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 87.0177778 | FgMDM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.15610860310000002 | FgMDM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 85.13785279999999 | FgMDM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 86.52888920000001 | ShallowConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 2.3070343 | ShallowConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 277.2352575 | ShallowConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 83.0155557 | EEGNet-8,2 |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9723642659999999 | EEGNet-8,2 |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 117.19713259999999 | EEGNet-8,2 |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 82.382222 | DeepConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9234428940000001 | DeepConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 110.56912460000001 | DeepConvNet |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 81.7311101 | LogVar + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.00362474352 | LogVar + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 6.762669579999999 | LogVar + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 79.6511118 | FBCSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 21.6308037 | FBCSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 117.8105055 | FBCSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 78.7111117 | LogVar + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000772556251 | LogVar + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 4.040722504 | LogVar + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 78.2866669 | TRCSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.002421635666 | TRCSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 14.640627636 | TRCSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 77.8066665 | CSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0356465945 | CSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 37.7887083 | CSP + SVM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 76.4377781 | CSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000984520588 | CSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 4.92442061 | CSP + LDA |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 76.4022231 | DLCSPauto + shLDA |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.001667790323 | DLCSPauto + shLDA |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 8.404077422 | DLCSPauto + shLDA |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 72.18666590000001 | EEGITNet |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.8872510549999999 | EEGITNet |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 106.55474389999999 | EEGITNet |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 68.4511113 | EEGTCNet |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 1.518727995 | EEGTCNet |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 183.107304 | EEGTCNet |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 64.291111 | MDM |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.01076914422 | MDM |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 14.947136800000001 | MDM |
| Brain Decoding | GrosseWentrup2009 MOABB | AUC-ROC | 56.99555540000001 | EEGNeX |
| Brain Decoding | GrosseWentrup2009 MOABB | CO2 Emission (g) | 3.4729265 | EEGNeX |
| Brain Decoding | GrosseWentrup2009 MOABB | training time (s) | 422.45747300000005 | EEGNeX |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 72.29885057471265 | CSP + LDA |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.0031280651400344825 | CSP + LDA |
| Brain Decoding | Shin2017A MOABB | training time (s) | 6.032976467126437 | CSP + LDA |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 70.97701149425288 | ACM + TS + SVM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.44081082241379316 | ACM + TS + SVM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 18.935673712643677 | ACM + TS + SVM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 70.86206896551724 | FgMDM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.006155834353908047 | FgMDM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 12.416171135632183 | FgMDM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 70.3448275862069 | DLCSPauto + shLDA |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.002772973099505747 | DLCSPauto + shLDA |
| Brain Decoding | Shin2017A MOABB | training time (s) | 5.865132493643678 | DLCSPauto + shLDA |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 70.11494252873564 | CSP + SVM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.005158950352873563 | CSP + SVM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 9.313418644827586 | CSP + SVM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 69.3103448275862 | TS + LR |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.0020542086796666668 | TS + LR |
| Brain Decoding | Shin2017A MOABB | training time (s) | 4.086728204942529 | TS + LR |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 68.67816091954023 | TS + EL |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.00418902949183908 | TS + EL |
| Brain Decoding | Shin2017A MOABB | training time (s) | 7.833182418390805 | TS + EL |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 68.44827586206897 | TS + SVM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.00357418835862069 | TS + SVM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 7.287723882183908 | TS + SVM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 67.29885057471265 | TRCSP + LDA |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.0028938624342988504 | TRCSP + LDA |
| Brain Decoding | Shin2017A MOABB | training time (s) | 5.785437376344828 | TRCSP + LDA |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 65.63218390804599 | FBCSP + SVM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.05493400862068966 | FBCSP + SVM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 0.29933049333333334 | FBCSP + SVM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 62.98850574712643 | MDM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.002936805686195402 | MDM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 6.130959453310345 | MDM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 61.7816091954023 | LogVar + LDA |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.0037351209763448272 | LogVar + LDA |
| Brain Decoding | Shin2017A MOABB | training time (s) | 7.392233189712644 | LogVar + LDA |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 61.37931034482759 | LogVar + SVM |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 0.00378480009954023 | LogVar + SVM |
| Brain Decoding | Shin2017A MOABB | training time (s) | 7.829565021494252 | LogVar + SVM |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 60.80459770114942 | ShallowConvNet |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 13.571865731034483 | ShallowConvNet |
| Brain Decoding | Shin2017A MOABB | training time (s) | 73.86500129885057 | ShallowConvNet |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 57.98850574712644 | EEGNet-8,2 |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 9.758972163218392 | EEGNet-8,2 |
| Brain Decoding | Shin2017A MOABB | training time (s) | 53.113962264367814 | EEGNet-8,2 |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 56.03448275862068 | DeepConvNet |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 5.162565710344827 | DeepConvNet |
| Brain Decoding | Shin2017A MOABB | training time (s) | 28.097837931034483 | DeepConvNet |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 52.18390804597701 | EEGITNet |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 8.672446098850575 | EEGITNet |
| Brain Decoding | Shin2017A MOABB | training time (s) | 47.200400390804596 | EEGITNet |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 51.26436781609196 | EEGTCNet |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 21.768854620689655 | EEGTCNet |
| Brain Decoding | Shin2017A MOABB | training time (s) | 118.47680619540229 | EEGTCNet |
| Brain Decoding | Shin2017A MOABB | AUC-ROC | 49.02298850574712 | EEGNeX |
| Brain Decoding | Shin2017A MOABB | CO2 Emission (g) | 16.20613807471264 | EEGNeX |
| Brain Decoding | Shin2017A MOABB | training time (s) | 88.2030973908046 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 88.70422614285715 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.49335965 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 327.9551457142857 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 88.64610935714285 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.044947839499999996 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 27.018976428571428 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 87.64284414285714 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020339250814285715 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 11.905010892857144 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 87.21996714285714 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005596339442857143 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 8.187318035714286 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 86.71347114285714 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.10021865657142857 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 67.09638471428572 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 84.81764307142858 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.48519369357142855 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 268.71988714285715 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 81.44109821428572 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 25.420092035714283 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 138.46111907142856 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 81.2303262857143 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19315654464285714 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 109.64171142857143 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 80.20351621428571 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.13953920821428573 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 87.55805742857142 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 79.41504057142856 | LogVar + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020349772242857143 | LogVar + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 22.148402514285713 | LogVar + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 79.23637321428572 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.032244818214285716 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 23.25204464285714 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 79.1367927142857 | TRCSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.018842971650000002 | TRCSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 16.598896885714286 | TRCSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 78.43861257142856 | LogVar + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014727059297142856 | LogVar + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 10.265415285714285 | LogVar + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 77.23480071428571 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005735273075 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 10.583879442857143 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 77.02151357142857 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005144324647142857 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 10.114322803571428 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 75.61966142857143 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.43859431071428573 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 261.3786007142857 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 74.66472221428572 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19887899714285712 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 113.00491099999999 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 68.58403092857142 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.6476672135714285 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 341.07117250000005 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 61.52606428571429 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00449722365 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 5.6453727 | MDM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 76.2289796153846 | TS + EL |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.008755807778846155 | TS + EL |
| Brain Decoding | Cho2017 MOABB | training time (s) | 13.766507201923076 | TS + EL |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 75.52711013461538 | ACM + TS + SVM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 1.8557469153846153 | ACM + TS + SVM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 62.31514830769231 | ACM + TS + SVM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 75.00852038461538 | TS + LR |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.0018744818367307692 | TS + LR |
| Brain Decoding | Cho2017 MOABB | training time (s) | 6.214885324999999 | TS + LR |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 74.61810898076924 | TS + SVM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.008696662651923077 | TS + SVM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 12.687089688461539 | TS + SVM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 73.83557690384616 | ShallowConvNet |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.058521977903846154 | ShallowConvNet |
| Brain Decoding | Cho2017 MOABB | training time (s) | 46.979712846153845 | ShallowConvNet |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 72.89826388461537 | FgMDM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.002231383398076923 | FgMDM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 4.56839715 | FgMDM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 71.92080661538462 | CSP + SVM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.013585275634615385 | CSP + SVM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 20.833295817307693 | CSP + SVM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 71.84767628846154 | TRCSP + LDA |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.001189626241 | TRCSP + LDA |
| Brain Decoding | Cho2017 MOABB | training time (s) | 3.8611871384615384 | TRCSP + LDA |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 71.67248932692308 | DeepConvNet |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.2637025025 | DeepConvNet |
| Brain Decoding | Cho2017 MOABB | training time (s) | 60.08802442307693 | DeepConvNet |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 71.38116988461539 | CSP + LDA |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.0011575846306923075 | CSP + LDA |
| Brain Decoding | Cho2017 MOABB | training time (s) | 3.884574095846154 | CSP + LDA |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 71.15633009615384 | DLCSPauto + shLDA |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.001064577328173077 | DLCSPauto + shLDA |
| Brain Decoding | Cho2017 MOABB | training time (s) | 3.4957703001923077 | DLCSPauto + shLDA |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 67.90934826923076 | FBCSP + SVM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.003133048219230769 | FBCSP + SVM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 2.7608346807692308 | FBCSP + SVM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 66.78533653846154 | EEGNet-8,2 |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.09790713498076922 | EEGNet-8,2 |
| Brain Decoding | Cho2017 MOABB | training time (s) | 22.314706884615383 | EEGNet-8,2 |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 65.46407580769231 | LogVar + SVM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.0015806333348076923 | LogVar + SVM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 4.417776592307693 | LogVar + SVM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 64.49059826923077 | LogVar + LDA |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.0009515043146153847 | LogVar + LDA |
| Brain Decoding | Cho2017 MOABB | training time (s) | 2.7242354466346157 | LogVar + LDA |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 63.39276176923077 | MDM |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.00237880536 | MDM |
| Brain Decoding | Cho2017 MOABB | training time (s) | 6.796549341730769 | MDM |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 58.33552344230769 | EEGTCNet |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.1190211419423077 | EEGTCNet |
| Brain Decoding | Cho2017 MOABB | training time (s) | 27.13974953846154 | EEGTCNet |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 57.196153846153855 | EEGITNet |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.11474572860576923 | EEGITNet |
| Brain Decoding | Cho2017 MOABB | training time (s) | 26.596911269230766 | EEGITNet |
| Brain Decoding | Cho2017 MOABB | AUC-ROC | 53.279941384615384 | EEGNeX |
| Brain Decoding | Cho2017 MOABB | CO2 Emission (g) | 0.2174445951923077 | EEGNeX |
| Brain Decoding | Cho2017 MOABB | training time (s) | 49.56457763461538 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 91.87717316666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8832741538888889 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 37.19322716666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 87.4123206111111 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.023651943657777775 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 91.08604166666666 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 86.52796605555557 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03423917689166667 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 58.82106999444444 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 86.47732361111112 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.021483784244444443 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 40.16215047222222 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 86.44255583333333 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010235186905555556 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 23.73425226666667 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 86.16591022222222 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23767624 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 28.300448333333332 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 84.4368855 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.30146339333333333 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 1.6411384872222223 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 83.07369627777778 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03449044713888889 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 60.17366931666667 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 82.74829922222222 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006283899536444444 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 21.795549848888886 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 82.33597905555557 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01768477408111111 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 26.033208126666665 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 82.07331861111112 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.11586982311111112 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 13.686492722222221 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 81.69425572222222 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.02021859091111111 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 42.17484379888889 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 79.83560116666666 | TRCSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.008658991335722222 | TRCSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 14.69900212111111 | TRCSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 77.95615972222222 | LogVar + LDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.005686139496333334 | LogVar + LDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 13.134125769444445 | LogVar + LDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 77.15268383333334 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.12332580900000001 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 14.563619111111112 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 75.86092177777778 | LogVar + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.007728553635555556 | LogVar + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 15.609176037777777 | LogVar + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 75.27399844444444 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1597577938888889 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 18.952416222222222 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 67.46182961111111 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.18110872972222222 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 20.17755577777778 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 66.28193516666667 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.31804718277777777 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 38.14933605555555 | EEGNeX |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 84.74444444444444 | TS + EL |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.002646718319444444 | TS + EL |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 4.678475692592593 | TS + EL |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 84.16666666666667 | ACM + TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.8164949121481482 | ACM + TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 29.706403990740743 | ACM + TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 83.57037037037037 | TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0024145104012962965 | TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 5.273111012962963 | TS + SVM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 83.09259259259258 | TS + LR |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0008697607500925927 | TS + LR |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 2.4829364574074075 | TS + LR |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 81.3425925925926 | FgMDM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0021175731353703705 | FgMDM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 5.031711893518518 | FgMDM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 77.27037037037037 | CSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.005258449698148148 | CSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 8.139176210185186 | CSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 76.88148148148147 | CSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0012470851392592593 | CSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 3.3465501966666666 | CSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 76.68703703703704 | DLCSPauto + shLDA |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0014866114661481482 | DLCSPauto + shLDA |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 4.686696781111111 | DLCSPauto + shLDA |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 76.2611111111111 | TRCSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.001290584364037037 | TRCSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 3.8623176347222223 | TRCSP + LDA |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 75.82777777777778 | ShallowConvNet |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0627169262962963 | ShallowConvNet |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 52.18373611111111 | ShallowConvNet |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 75.07222222222222 | FBCSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.4983456616666667 | FBCSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 2.7125740925925927 | FBCSP + SVM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 73.83148148148148 | LogVar + SVM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0023018676362962964 | LogVar + SVM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 4.534608688425926 | LogVar + SVM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 70.64722222222223 | DeepConvNet |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.08747840010185186 | DeepConvNet |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 19.933118574074072 | DeepConvNet |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 70.22962962962963 | MDM |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.00100529917 | MDM |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 3.1416363901851856 | MDM |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 66.21296296296296 | LogVar + LDA |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.0026458692239444445 | LogVar + LDA |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 6.251461617777778 | LogVar + LDA |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 65.67222222222222 | EEGNet-8,2 |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.06521628261574074 | EEGNet-8,2 |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 14.961433282407407 | EEGNet-8,2 |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 59.166666666666664 | EEGITNet |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.08459861206481481 | EEGITNet |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 19.277117560185186 | EEGITNet |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 55.681481481481484 | EEGTCNet |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.07880292099074075 | EEGTCNet |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 17.962674342592592 | EEGTCNet |
| Brain Decoding | Lee2019-MI MOABB | AUC-ROC | 55.12222222222223 | EEGNeX |
| Brain Decoding | Lee2019-MI MOABB | CO2 Emission (g) | 0.17330265775 | EEGNeX |
| Brain Decoding | Lee2019-MI MOABB | training time (s) | 39.780105 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 95.65019116666667 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.1549817675 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 18.007408791666666 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 95.18760766666666 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.13623877575 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 4.912889991666667 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.84044641666665 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.11864727041666667 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 13.72778775 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.41753624999998 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.11453622516666667 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 13.273857999999999 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.35313333333333 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0018601271058333332 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 3.7908793 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.16005008333333 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0007884223154166666 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 2.283726725 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 93.533263 | TRCSP + LDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0009910642599999999 | TRCSP + LDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 2.9101597717500005 | TRCSP + LDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 93.37149766666667 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0025104166216666666 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 5.204099866666667 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 93.14890566666666 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0006859483835833334 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 1.3644024541666664 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 92.96259333333333 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.006482190183333333 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 10.441263425 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 92.63712633333334 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.12367576549999999 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.6734122016666667 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 92.55652333333333 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0033206487941666667 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 6.522374073333334 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 92.5358025 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0012211545708333334 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 2.4993543233333333 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 90.7018375 | MDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0022293055558333334 | MDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 5.702021107499999 | MDM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 88.46995433333333 | LogVar + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0020454070625 | LogVar + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 5.637304889999999 | LogVar + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 88.38607883333333 | LogVar + LDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0012580402871666667 | LogVar + LDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 3.2995239900000004 | LogVar + LDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 82.2366395 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.16067158750000002 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 16.823401416666666 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 69.41324841666666 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.12495182708333334 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 14.432597083333334 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 61.559105 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.17477492000000003 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 20.40160175 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 97.25585694444443 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8372758266666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 33.48545766666667 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 94.44897994444445 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0007312805027777778 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 2.885060657222222 | TS + LR |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 94.44784577777777 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0018545968405555553 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 4.854808299999999 | TS + EL |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 94.00944755555555 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0013835059555555556 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 3.3391828388888887 | TS + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 93.54648549999999 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.24335663111111114 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 1.324833988888889 | FBCSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 93.52191866666666 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0006420009155555556 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 3.5817672655555555 | FgMDM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 93.00151144444445 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23494162666666668 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 27.16444661111111 | ShallowConvNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 91.5359025 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00046965705572222225 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 2.096713888888889 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 91.51511638888888 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0008947458374444445 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 2.750061953611111 | CSP + LDA |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 91.03968261111112 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0063117480444444445 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 11.314337022222222 | CSP + SVM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 89.12547266666667 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00043345056416666666 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 1.5749139627777777 | MDM |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 88.55026438888889 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.16107902277777777 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 18.505341833333333 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 88.27324277777778 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1293751948888889 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 14.970135055555554 | DeepConvNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 75.98148133333333 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.14507292438888889 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 16.651739888888887 | EEGITNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 75.20748333333333 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.22110831444444445 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 25.485177055555553 | EEGTCNet |
| Brain Decoding | BNCI2014-001 MOABB | AUC-ROC | 64.35903111111112 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | CO2 Emission (g) | 0.2859660588888889 | EEGNeX |
| Brain Decoding | BNCI2014-001 MOABB | training time (s) | 33.142690944444446 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 93.39429239999998 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 2.92276621 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 101.6704931 | ACM + TS + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 92.3246172 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.006040798 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 11.57989181 | TS + EL |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 91.8383288 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0059158554199999994 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 9.11110455 | TS + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 91.5263066 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.001118637826 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 4.60279952 | TS + LR |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.696109 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 19.651363984 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 84.42076999999999 | ShallowConvNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.6372764 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0101869405 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 14.5114632 | CSP + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.59406740000001 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0004474954558 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 2.7403618635 | CSP + LDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.55835479999999 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.00180466725 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 3.8331035200000003 | FgMDM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.4768809 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.0007442022196 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 4.568564723 | DLCSPauto + shLDA |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 88.26785749999999 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.568418502 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 3.09451051 | FBCSP + SVM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 79.28683079999999 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 19.414860764000004 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 35.9970033 | DeepConvNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 78.1468433 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 4.84414613 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 24.251992 | EEGNet-8,2 |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 65.18000699999999 | MDM |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 0.000844543333 | MDM |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 2.796476937 | MDM |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 62.538903499999996 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 7.962777576000001 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 19.2195519 | EEGITNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 62.3676652 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 7.512717858499999 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 29.570441 | EEGTCNet |
| Brain Decoding | Weibo2014 MOABB | AUC-ROC | 60.17745599999999 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | CO2 Emission (g) | 16.597322944000002 | EEGNeX |
| Brain Decoding | Weibo2014 MOABB | training time (s) | 44.7978774 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 97.20956825 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.12496935208333333 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 4.858959566666667 | ACM + TS + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 97.06439391666666 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.1509912575 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 18.427412083333333 | ShallowConvNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 96.76458083333334 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00005349374241666666 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.08235803066666667 | TS + LR |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 96.58612958333333 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0005289931975 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.7517524533333333 | TS + EL |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 96.10875391666666 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.0005871264258333333 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.7894516191666666 | TS + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 96.03910916666666 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00010140754249999999 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.23585249774999997 | FgMDM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 95.91615191666666 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.08542806208333333 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 10.515160691666667 | DeepConvNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 95.19816666666668 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00005386587691666667 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.12567347733333334 | CSP + LDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.95107591666667 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00316684425 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 4.423639016666667 | CSP + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.63445591666667 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.13053382583333334 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.7107954383333334 | FBCSP + SVM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.58252499999999 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.09276203341666667 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 11.2586846 | EEGNet-8,2 |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 94.43122416666667 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00005045180425 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.10749997658333332 | DLCSPauto + shLDA |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 92.21307508333332 | MDM |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.00003917033591666667 | MDM |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 0.062127622166666674 | MDM |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 85.46364075 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.13808337241666666 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 16.91200925 | EEGTCNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 80.40247383333333 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.10409523749999999 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 12.826676 | EEGITNet |
| Brain Decoding | Zhou2016 MOABB | AUC-ROC | 64.79907375 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | CO2 Emission (g) | 0.17851248916666665 | EEGNeX |
| Brain Decoding | Zhou2016 MOABB | training time (s) | 21.63750320833333 | EEGNeX |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 92.30178571428571 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.38974278 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 16.371186375 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 91.56785714285715 | FBCSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.9452996678571429 | FBCSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 4.884339850000001 | FBCSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 91.40714285714286 | ShallowConvNet |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.240711847 | ShallowConvNet |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 29.228367535714284 | ShallowConvNet |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 91.19107142857142 | TS + EL |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0021765681464285713 | TS + EL |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 3.0829317250000003 | TS + EL |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 91.09285714285714 | TS + LR |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0016561550864285714 | TS + LR |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 3.2331909737499998 | TS + LR |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 90.80535714285715 | TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.002693355064285714 | TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 4.09123845 | TS + SVM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 90.43214285714286 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.14237826092857142 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 17.193978785714286 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 90.18214285714286 | FgMDM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000829699048642857 | FgMDM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 1.5857523525357142 | FgMDM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 89.19285714285714 | CSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.009411417503571428 | CSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 11.710567267857144 | CSP + SVM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 88.87321428571428 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0005799335712857143 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 1.1508428444642858 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 88.52321428571429 | CSP + LDA |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000595994413607143 | CSP + LDA |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 1.07737538725 | CSP + LDA |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 88.12321428571428 | DeepConvNet |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.12839999017857143 | DeepConvNet |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 15.592928589285714 | DeepConvNet |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 86.20357142857144 | MDM |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0007177980582857143 | MDM |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 1.3408162827142858 | MDM |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 77.21160714285715 | EEGTCNet |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.18671340807142858 | EEGTCNet |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 22.635748839285714 | EEGTCNet |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 72.33571428571429 | EEGNeX |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.34515593464285715 | EEGNeX |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 41.56138553571429 | EEGNeX |
| Brain Decoding | BNCI2015-001 MOABB | AUC-ROC | 71.94642857142857 | EEGITNet |
| Brain Decoding | BNCI2015-001 MOABB | CO2 Emission (g) | 0.16193158389285714 | EEGITNet |
| Brain Decoding | BNCI2015-001 MOABB | training time (s) | 19.546656482142858 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.9680807142857 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.63215142142857 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 330.0909378571428 | ACM + TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.72027014285713 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3588719162857143 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 349.39148821428574 | TS + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.59824428571429 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014680511778571428 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 13.988061071428572 | TS + LR |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.56472542857144 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3353505528571428 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 327.06053857142854 | TS + EL |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.47625814285713 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.089541701 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 82.60363664285714 | FgMDM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 98.05647592857143 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 40.59940300142857 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 320.2012192857143 | ShallowConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 97.50308285714286 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04334756092857143 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 45.233243214285714 | CSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 97.39603707142858 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 36.42587592857143 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 198.47335871428572 | FBCSP + SVM |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 97.14958464285715 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 29.02176669 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 280.00296785714283 | EEGTCNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 97.02462435714286 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00044260885642857144 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 0.5883504935714285 | CSP + LDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 96.95337171428572 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0004114472164285714 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 0.5423086028571429 | DLCSPauto + shLDA |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 96.49739557142858 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.778447587857142 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 91.89510485714287 | EEGNet-8,2 |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 96.04328542857142 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.278272536428571 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 130.05448907142858 | EEGITNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 95.901341 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.213161058571428 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 106.127537 | DeepConvNet |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 89.48676185714287 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 42.28841732428571 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 464.49325142857145 | EEGNeX |
| Brain Decoding | Schirrmeister2017 MOABB | AUC-ROC | 84.6734955 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.012343685785714287 | MDM |
| Brain Decoding | Schirrmeister2017 MOABB | training time (s) | 11.868311578571427 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 94.27232417431192 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002292956512844037 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.69788353027523 | TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 94.09464829357799 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0023048844770642203 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 4.660472736697248 | TS + EL |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 93.72140674311926 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.3743661817798165 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 13.275803577981652 | ACM + TS + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 93.14561674311926 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0011862718552201835 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 3.9450754762385323 | TS + LR |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 89.6715086146789 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016952853321100917 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 3.6619959064220184 | FgMDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 88.03649339449541 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.004252216568807339 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 7.574546786238533 | CSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 86.80902140366973 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006039077076697248 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 1.9964198499449541 | DLCSPauto + shLDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 86.41442402752293 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006479088561559633 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 2.1433882502201835 | CSP + LDA |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 83.96839963302753 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2592725837798165 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 1.4225005266055046 | FBCSP + SVM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 81.77716613761469 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0009060356478532111 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 2.9963101233394496 | MDM |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 74.75147803669724 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7205820762752294 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 12.103473417431193 | ShallowConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 73.77573903669725 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7542787600917431 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 14.662491354128441 | EEGNet-8,2 |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 71.49345055045872 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.596559912321101 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 17.621344155963303 | DeepConvNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 57.02803262385321 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.8152764195963302 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 12.905036509174312 | EEGTCNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 54.69051987155964 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.4469922132752293 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 14.05607252293578 | EEGITNet |
| Brain Decoding | PhysionetMotorImagery MOABB | AUC-ROC | 51.76753313761468 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.6592816424495412 | EEGNeX |
| Brain Decoding | PhysionetMotorImagery MOABB | training time (s) | 15.441041990825688 | EEGNeX |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 87.645089 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.44054961000000004 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 18.66545185714286 | ACM + TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 87.600446 | ShallowConvNet |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.242558344 | ShallowConvNet |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 27.519666214285714 | ShallowConvNet |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 87.56138435714286 | DeepConvNet |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14939979285714286 | DeepConvNet |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 16.94769892857143 | DeepConvNet |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 86.19419642857142 | TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0012505346957142856 | TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 2.250145164285714 | TS + SVM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 85.97656321428572 | TS + EL |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0011540398678571429 | TS + EL |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 2.0496247785714288 | TS + EL |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 85.85937435714285 | TS + LR |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00019676502564285715 | TS + LR |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 0.7383969874999999 | TS + LR |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 84.76562464285713 | FgMDM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00011930851807142857 | FgMDM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 0.2638224375 | FgMDM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 83.93415214285714 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14752584 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 16.83683 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 81.21093692857143 | CSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.005598228914285714 | CSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 8.607374964285714 | CSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 80.98214378571429 | CSP + LDA |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00014398938164285712 | CSP + LDA |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 0.32359593000000003 | CSP + LDA |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 80.44642807142857 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00027854637564285716 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 1.0558947701428572 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 80.39062507142857 | FBCSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.27677554071428573 | FBCSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 1.506631742857143 | FBCSP + SVM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 77.48325942857143 | MDM |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0001488995962142857 | MDM |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 0.5031258411428572 | MDM |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 73.92299242857143 | EEGTCNet |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.21598919785714285 | EEGTCNet |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 24.45626664285714 | EEGTCNet |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 70.89843778571428 | EEGITNet |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14692778499999998 | EEGITNet |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 16.739025642857143 | EEGITNet |
| Brain Decoding | BNCI2014-002 MOABB | AUC-ROC | 69.94977778571429 | EEGNeX |
| Brain Decoding | BNCI2014-002 MOABB | CO2 Emission (g) | 0.357494305 | EEGNeX |
| Brain Decoding | BNCI2014-002 MOABB | training time (s) | 40.932428357142854 | EEGNeX |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 62.55243744444444 | TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0030399768388888887 | TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 3.981446488888889 | TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 62.00432277777777 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.9881697544444444 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 38.20503083333333 | ACM + TS + SVM |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 61.008716111111106 | TS + LR |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014654134566666668 | TS + LR |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 2.3641572122222225 | TS + LR |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 58.70323127777778 | TS + EL |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.003150417694444444 | TS + EL |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 4.107975877777778 | TS + EL |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 58.31313783333333 | FgMDM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.00262010596 | FgMDM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 4.208450687777778 | FgMDM |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 57.22930833333333 | ShallowConvNet |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.17052666777777778 | ShallowConvNet |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 19.448256999999998 | ShallowConvNet |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 57.07518416666667 | DeepConvNet |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1387313113888889 | DeepConvNet |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 15.772786944444444 | DeepConvNet |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 54.19855455555555 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.11595792811111111 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 13.1632145 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 54.02069177777777 | CSP + LDA |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014029495131111112 | CSP + LDA |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 2.2638508043333334 | CSP + LDA |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 53.02189611111111 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0022248175055555553 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 3.5652031144444445 | DLCSPauto + shLDA |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 53.01977022222223 | EEGNeX |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.2742768266666667 | EEGNeX |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 31.471043611111114 | EEGNeX |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 52.50602344444445 | FBCSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.16502183722222222 | FBCSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 0.8984944177777778 | FBCSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 52.0801445 | CSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0062806895666666675 | CSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 7.718107805555555 | CSP + SVM |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 51.408021500000004 | EEGITNet |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.14264759755555556 | EEGITNet |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 16.165079277777778 | EEGITNet |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 51.220592611111115 | EEGTCNet |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1444858745 | EEGTCNet |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 16.36140288888889 | EEGTCNet |
| Brain Decoding | BNCI2015-004 MOABB | AUC-ROC | 48.451672277777774 | MDM |
| Brain Decoding | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0008106952038888889 | MDM |
| Brain Decoding | BNCI2015-004 MOABB | training time (s) | 1.3395202661111112 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 83.75 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000240011290125 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.390257074875 | TS + LR |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 83.59375 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1485686325 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 5.5518258375 | ACM + TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 82.65625 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000746707585 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 3.0611184312499997 | TS + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 81.40625 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00053827818375 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.177448355 | TS + EL |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 80.78125 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.213897607 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 1.1647642375 | FBCSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 79.84375 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00010770661525000001 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 0.419455321625 | FgMDM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 78.59375 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0020791944125 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 4.649679825 | CSP + SVM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 77.1875 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00078139250425 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 2.24472090125 | CSP + LDA |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 77.03125 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000210748843625 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 0.96225866875 | DLCSPauto + shLDA |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 74.21875 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00035755518724999997 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 2.244058851625 | MDM |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.21616533875 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 22.844518 | EEGNet-8,2 |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.274686495 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 29.150003124999998 | ShallowConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 61.875 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1890227225 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 20.30683625 | DeepConvNet |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 61.09375 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32988478875 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 34.859817375 | EEGTCNet |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 52.34375 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32373731 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 34.4930355 | EEGNeX |
| Brain Decoding | AlexandreMotorImagery MOABB | AUC-ROC | 47.5 | EEGITNet |
| Brain Decoding | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.23635414124999998 | EEGITNet |
| Brain Decoding | AlexandreMotorImagery MOABB | training time (s) | 25.280098125 | EEGITNet |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 84.68838325 | EEGNeX |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 35.690736875 | EEGNeX |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 84.29081139285714 | XDAWNCov + TS + SVM |
| Brain Decoding | EPFLP300 MOABB | CO2 Emission (g) | 0.03015609335714286 | XDAWNCov + TS + SVM |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 3.1239111678571425 | XDAWNCov + TS + SVM |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 84.0994343125 | EEGITNet |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 28.6127446875 | EEGITNet |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 83.19801607142858 | XDAWNCov + MDM |
| Brain Decoding | EPFLP300 MOABB | CO2 Emission (g) | 0.006680508521428571 | XDAWNCov + MDM |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 0.7105525185714285 | XDAWNCov + MDM |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 80.3845744375 | EEGNet-8,2 |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 15.535605484375 | EEGNet-8,2 |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 75.556908 | ShallowConvNet |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 15.697078703125 | ShallowConvNet |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 71.973831125 | ERPCov + MDM |
| Brain Decoding | EPFLP300 MOABB | CO2 Emission (g) | 0.03419226534375 | ERPCov + MDM |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 6.942208496875 | ERPCov + MDM |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 71.444304125 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | EPFLP300 MOABB | CO2 Emission (g) | 0.011323257109375 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 1.2007145884375 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | EPFLP300 MOABB | AUC-ROC | 62.982488281250006 | XDAWN + LDA |
| Brain Decoding | EPFLP300 MOABB | CO2 Emission (g) | 0.018060430625 | XDAWN + LDA |
| Brain Decoding | EPFLP300 MOABB | training time (s) | 3.6105500875 | XDAWN + LDA |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 88.82306907692308 | EEGITNet |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 254.26117153846155 | EEGITNet |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 87.28411109999999 | XDAWNCov + TS + SVM |
| Brain Decoding | Sosulski2019 MOABB | CO2 Emission (g) | 0.027893668675 | XDAWNCov + TS + SVM |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 4.33317254 | XDAWNCov + TS + SVM |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 87.13865323076924 | EEGNet-8,2 |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 169.22427923076924 | EEGNet-8,2 |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 86.17639538461539 | EEGNeX |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 292.10557615384613 | EEGNeX |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 86.07416710000001 | XDAWNCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | CO2 Emission (g) | 0.013847520075 | XDAWNCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 2.812111245 | XDAWNCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 78.35273161538461 | ShallowConvNet |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 215.27583423076925 | ShallowConvNet |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 70.632222375 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Sosulski2019 MOABB | CO2 Emission (g) | 0.015362666562499998 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 1.6276701575 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 68.16548655 | ERPCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | CO2 Emission (g) | 0.062550748675 | ERPCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 12.6986916875 | ERPCov + MDM |
| Brain Decoding | Sosulski2019 MOABB | AUC-ROC | 67.48655605 | XDAWN + LDA |
| Brain Decoding | Sosulski2019 MOABB | CO2 Emission (g) | 0.0360850438 | XDAWN + LDA |
| Brain Decoding | Sosulski2019 MOABB | training time (s) | 7.327161445 | XDAWN + LDA |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 83.0813024 | XDAWNCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0042846727000000005 | XDAWNCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 0.872752316 | XDAWNCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 82.9463175 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2015-003 MOABB | CO2 Emission (g) | 0.02330993935 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 4.73371116 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 81.8696517 | EEGITNet |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 31.673819200000004 | EEGITNet |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 81.1056664 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 21.2605219 | EEGNet-8,2 |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 78.6240163 | XDAWN + LDA |
| Brain Decoding | BNCI2015-003 MOABB | CO2 Emission (g) | 0.00903317618 | XDAWN + LDA |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 1.74386197 | XDAWN + LDA |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 77.73544530000001 | EEGNeX |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 27.2078305 | EEGNeX |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 76.9320484 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0047693783 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 0.5074777229999999 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 76.7858569 | ERPCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | CO2 Emission (g) | 0.007065287250000001 | ERPCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 1.437615323 | ERPCov + MDM |
| Brain Decoding | BNCI2015-003 MOABB | AUC-ROC | 64.19801570000001 | ShallowConvNet |
| Brain Decoding | BNCI2015-003 MOABB | training time (s) | 24.1188684 | ShallowConvNet |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 85.99520425 | EEGITNet |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 48.9808785 | EEGITNet |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 85.91137825 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 31.55059125 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 85.609029625 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-008 MOABB | CO2 Emission (g) | 0.035406213775 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 8.160695075 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 83.856046375 | EEGNeX |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 47.301771625 | EEGNeX |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 82.244593125 | XDAWN + LDA |
| Brain Decoding | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0257013525 | XDAWN + LDA |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 5.2152112625000004 | XDAWN + LDA |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 81.07391687500001 | ShallowConvNet |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 27.2347555 | ShallowConvNet |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 77.619541 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0075848861750000005 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 1.5414688625 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 75.424771125 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-008 MOABB | CO2 Emission (g) | 0.009542170825 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 1.014923625 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-008 MOABB | AUC-ROC | 74.298471 | ERPCov + MDM |
| Brain Decoding | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0120071045 | ERPCov + MDM |
| Brain Decoding | BNCI2014-008 MOABB | training time (s) | 2.4383516875 | ERPCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 90.677777575 | XDAWNCov + TS + SVM |
| Brain Decoding | Cattan2019-VR MOABB | CO2 Emission (g) | 0.008065587075 | XDAWNCov + TS + SVM |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 0.85638401025 | XDAWNCov + TS + SVM |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 89.4212960952381 | EEGITNet |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 22.83087557142857 | EEGITNet |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 89.3339950952381 | EEGNeX |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 23.31658614285714 | EEGNeX |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 88.529687375 | XDAWNCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0017226343375000002 | XDAWNCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 0.18693414675 | XDAWNCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 86.3244051904762 | EEGNet-8,2 |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 15.87339438095238 | EEGNet-8,2 |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 80.757379 | ERPCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0067425482250000005 | ERPCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 0.7168895120000001 | ERPCov + MDM |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 80.674825575 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0027964518625 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 0.30020958225 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 80.03306880952381 | ShallowConvNet |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 13.902749985714287 | ShallowConvNet |
| Brain Decoding | Cattan2019-VR MOABB | AUC-ROC | 67.159201475 | XDAWN + LDA |
| Brain Decoding | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0033990314475 | XDAWN + LDA |
| Brain Decoding | Cattan2019-VR MOABB | training time (s) | 0.3639022155 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 93.05381111627908 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.010436311162015504 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 2.1127921527131783 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 92.56596253488371 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0024371379224806203 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 0.4988526374418605 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 90.70906591472868 | EEGITNet |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 19.85593708914729 | EEGITNet |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 87.61770750387598 | EEGNeX |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 199.32986724031008 | EEGNeX |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 86.79717793023256 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 14.414908054263565 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 80.01716807751939 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.019448981011627904 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 3.9502074596899224 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 77.92098565891473 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0052664793930232556 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 0.560524827751938 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 76.01550499224807 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0039047394186046513 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 0.7962977278294574 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015a MOABB | AUC-ROC | 59.55947582945736 | ShallowConvNet |
| Brain Decoding | BrainInvaders2015a MOABB | training time (s) | 15.322640255813955 | ShallowConvNet |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 98.46594386111111 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2018 MOABB | CO2 Emission (g) | 0.07899148369444445 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 9.940868125 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 98.17509305555555 | EEGNet-8,2 |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 78.75188250000001 | EEGNet-8,2 |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 97.78393108333331 | XDAWNCov + MDM |
| Brain Decoding | Huebner2018 MOABB | CO2 Emission (g) | 0.02470122563888889 | XDAWNCov + MDM |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 5.015010133333333 | XDAWNCov + MDM |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 97.53628586111111 | XDAWN + LDA |
| Brain Decoding | Huebner2018 MOABB | CO2 Emission (g) | 0.16110926027777778 | XDAWN + LDA |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 32.70688272222222 | XDAWN + LDA |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 96.608676 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2018 MOABB | CO2 Emission (g) | 0.03743309013888889 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 3.9697683444444447 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 95.14819502777779 | ERPCov + MDM |
| Brain Decoding | Huebner2018 MOABB | CO2 Emission (g) | 0.1544211313888889 | ERPCov + MDM |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 31.349976444444444 | ERPCov + MDM |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 89.71045811111111 | ShallowConvNet |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 1587.3318289166666 | ShallowConvNet |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 87.6017086111111 | EEGITNet |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 2489.9952416666665 | EEGITNet |
| Brain Decoding | Huebner2018 MOABB | AUC-ROC | 76.54384258333333 | EEGNeX |
| Brain Decoding | Huebner2018 MOABB | training time (s) | 4893.720471111111 | EEGNeX |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 90.98646704 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007038169084 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 1.4309155479999998 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 89.64630072 | EEGITNet |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 19.83932564 | EEGITNet |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 88.21925356 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.001676014172 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 0.3440682904 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 88.21605579999999 | EEGNeX |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 43.42852808000001 | EEGNeX |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 87.1327338 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 16.79750712 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 79.01510372 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.003451275416 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 0.3691924696 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 78.76657744 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007749152372 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 1.5751372879999999 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 77.06215808 | ShallowConvNet |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 12.831535652 | ShallowConvNet |
| Brain Decoding | BrainInvaders2012 MOABB | AUC-ROC | 64.411995 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.002132688384 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2012 MOABB | training time (s) | 0.4368925492 | XDAWN + LDA |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 98.40814827777777 | XDAWNCov + TS + SVM |
| Brain Decoding | Lee2019-ERP MOABB | CO2 Emission (g) | 0.17517531703703704 | XDAWNCov + TS + SVM |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 18.539845689814815 | XDAWNCov + TS + SVM |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 97.85841548148149 | EEGNet-8,2 |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 109.5753095 | EEGNet-8,2 |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 97.70259957407407 | XDAWNCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | CO2 Emission (g) | 0.04369601411111111 | XDAWNCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 8.865101517592594 | XDAWNCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 96.81215804629629 | EEGITNet |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 468.54065999999995 | EEGITNet |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 96.45206821296297 | XDAWN + LDA |
| Brain Decoding | Lee2019-ERP MOABB | CO2 Emission (g) | 0.13853210805555555 | XDAWN + LDA |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 28.108453657407406 | XDAWN + LDA |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 82.47109035185186 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Lee2019-ERP MOABB | CO2 Emission (g) | 0.09060789349074073 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 9.584082125 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 77.4085946574074 | ShallowConvNet |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 4598.484442222222 | ShallowConvNet |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 74.43493880555556 | ERPCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | CO2 Emission (g) | 0.6299353016666667 | ERPCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 127.87080321296297 | ERPCov + MDM |
| Brain Decoding | Lee2019-ERP MOABB | AUC-ROC | 70.27269508333333 | EEGNeX |
| Brain Decoding | Lee2019-ERP MOABB | training time (s) | 6374.80394962963 | EEGNeX |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 86.65828684375 | EEGITNet |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 22.878644265625 | EEGITNet |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 85.766639203125 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0118778180875 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 2.4124490578125 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 85.082494609375 | EEGNeX |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 40.16552703125 | EEGNeX |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 82.089285546875 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 17.4438248203125 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 80.87908620312501 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.002724634465625 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 0.55664274078125 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 72.112766 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0055548682296875 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 0.593198109375 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 71.61664846875 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0108043912796875 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 2.19471158046875 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 66.600249390625 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.00539390185625 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 1.09766276640625 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014a MOABB | AUC-ROC | 63.189278171874996 | ShallowConvNet |
| Brain Decoding | BrainInvaders2014a MOABB | training time (s) | 11.1103096703125 | ShallowConvNet |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 93.42633376666666 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0059379570460000005 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 1.2433190566666668 | XDAWNCov + TS + SVM |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 92.20581209999999 | EEGITNet |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 14.687204666666666 | EEGITNet |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 92.0386331 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00151833076 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 0.31271911366666666 | XDAWNCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 91.3685305 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 11.758606149999999 | EEGNet-8,2 |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 90.57953203333334 | EEGNeX |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 14.724422183333333 | EEGNeX |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 85.12375750000001 | ShallowConvNet |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 10.642818243333332 | ShallowConvNet |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 84.51730606666668 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0025560880933333334 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 0.27403514700000003 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 81.155062 | ERPCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00581838295 | ERPCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 1.1838480853333333 | ERPCov + MDM |
| Brain Decoding | BNCI2014-009 MOABB | AUC-ROC | 64.0324565 | XDAWN + LDA |
| Brain Decoding | BNCI2014-009 MOABB | CO2 Emission (g) | 0.001991239006666667 | XDAWN + LDA |
| Brain Decoding | BNCI2014-009 MOABB | training time (s) | 0.4082341586666667 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 84.55596702272726 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.043256562954545455 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 8.7821148 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 83.47637268181818 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.009540853547727273 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 1.9377388022727273 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 83.33420745454546 | EEGITNet |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 51.57266440909091 | EEGITNet |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 82.65727052272726 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 36.372572295454546 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 81.59775325 | EEGNeX |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 105.33800122727274 | EEGNeX |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 77.22383009090909 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.03399095902272727 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 6.902407668181818 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 77.09262879545456 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.022060082954545455 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 2.337742318181818 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 75.03742063636363 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.08719968354545454 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 17.70060197727273 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2015b MOABB | AUC-ROC | 73.19578579545454 | ShallowConvNet |
| Brain Decoding | BrainInvaders2015b MOABB | training time (s) | 50.65970795454545 | ShallowConvNet |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 92.71220376712328 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005985859813698631 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 1.2172368082191782 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 90.96501701369863 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.001490637705479452 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 0.30659427246575344 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 90.01125384931507 | EEGITNet |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 16.593567684931507 | EEGITNet |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 88.61672143835617 | EEGNeX |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 25.649349828767125 | EEGNeX |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 85.40249767123287 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 13.898916060273972 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 82.06941052054795 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.002071112097260274 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 0.22355115438356163 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 80.58733515068494 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005112474912328768 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 1.0407688483561643 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 76.74075019178083 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.0024966474219178083 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 0.5100849124657535 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2013a MOABB | AUC-ROC | 74.50491942465753 | ShallowConvNet |
| Brain Decoding | BrainInvaders2013a MOABB | training time (s) | 9.185006005479453 | ShallowConvNet |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 98.68678031578948 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2017 MOABB | CO2 Emission (g) | 0.06488028365789474 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 10.07638602631579 | XDAWNCov + TS + SVM |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 98.28146008108108 | EEGNet-8,2 |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 73.38250045945946 | EEGNet-8,2 |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 98.07393668421052 | XDAWNCov + MDM |
| Brain Decoding | Huebner2017 MOABB | CO2 Emission (g) | 0.02386866539473684 | XDAWNCov + MDM |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 4.846665142105263 | XDAWNCov + MDM |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 97.74267144736841 | XDAWN + LDA |
| Brain Decoding | Huebner2017 MOABB | CO2 Emission (g) | 0.12781473060526316 | XDAWN + LDA |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 25.946418210526314 | XDAWN + LDA |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 96.20552692105264 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2017 MOABB | CO2 Emission (g) | 0.03857930394736842 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 4.081931507894737 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 95.78304654054055 | EEGITNet |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 675.4294938108109 | EEGITNet |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 94.469262 | ERPCov + MDM |
| Brain Decoding | Huebner2017 MOABB | CO2 Emission (g) | 0.13750907568421053 | ERPCov + MDM |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 27.91168176315789 | ERPCov + MDM |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 90.959699 | ShallowConvNet |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 1543.135988162162 | ShallowConvNet |
| Brain Decoding | Huebner2017 MOABB | AUC-ROC | 79.73031656756756 | EEGNeX |
| Brain Decoding | Huebner2017 MOABB | training time (s) | 4185.744198918919 | EEGNeX |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 91.88114464864864 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.004579043135135135 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 0.932672401891892 | XDAWNCov + TS + SVM |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 91.58241135135135 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0011774970894594596 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 0.2431399435135135 | XDAWNCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 86.26866734210526 | EEGITNet |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 15.856247092105264 | EEGITNet |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 83.87045207894737 | EEGNeX |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 18.323774763157896 | EEGNeX |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 83.72681281081081 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0021593195945945947 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 0.44246931054054056 | XDAWN + LDA |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 80.14453618421052 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 11.691945342105264 | EEGNet-8,2 |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 78.56550172972973 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.008591208308108108 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 1.7454204 | ERPCov + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 76.47954105405405 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.002490634086486486 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 0.2674589289189189 | ERPCov(svd_n=4) + MDM |
| Brain Decoding | BrainInvaders2014b MOABB | AUC-ROC | 63.752483210526314 | ShallowConvNet |
| Brain Decoding | BrainInvaders2014b MOABB | training time (s) | 8.105964836842105 | ShallowConvNet |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 99.19753077777779 | TRCA |
| Brain Decoding | Nakanishi2015 MOABB | CO2 Emission (g) | 0.04248703377777777 | TRCA |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 5.9494875333333335 | TRCA |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 92.53086377777778 | CCA |
| Brain Decoding | Nakanishi2015 MOABB | CO2 Emission (g) | 0.007113911222222223 | CCA |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 0.9963089366666666 | CCA |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 87.22222211111111 | SSVEP_TS + LR |
| Brain Decoding | Nakanishi2015 MOABB | CO2 Emission (g) | 0.08959895766666666 | SSVEP_TS + LR |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 4.598894566666667 | SSVEP_TS + LR |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 86.29629577777777 | SSVEP_TS + SVM |
| Brain Decoding | Nakanishi2015 MOABB | CO2 Emission (g) | 0.07978009122222222 | SSVEP_TS + SVM |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 4.098129833333334 | SSVEP_TS + SVM |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 82.65431844444444 | EEGNeX |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 35.36092722222222 | EEGNeX |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 80.86419722222222 | EEGITNet |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 8.040663722222222 | EEGITNet |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 78.76543211111111 | SSVEP_MDM |
| Brain Decoding | Nakanishi2015 MOABB | CO2 Emission (g) | 0.10513940711111111 | SSVEP_MDM |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 5.3561836 | SSVEP_MDM |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 57.469136 | ShallowConvNet |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 6.811167988888889 | ShallowConvNet |
| Brain Decoding | Nakanishi2015 MOABB | Accuracy | 44.135803 | EEGNet-8,2 |
| Brain Decoding | Nakanishi2015 MOABB | training time (s) | 4.711782822222222 | EEGNet-8,2 |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 42.1 | SSVEP_TS + LR |
| Brain Decoding | MAMEM3 MOABB | CO2 Emission (g) | 0.026997567 | SSVEP_TS + LR |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 1.46499837 | SSVEP_TS + LR |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 40.199999999999996 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM3 MOABB | CO2 Emission (g) | 0.0252171588 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 1.36490621 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 34.4 | SSVEP_MDM |
| Brain Decoding | MAMEM3 MOABB | CO2 Emission (g) | 0.028922213000000002 | SSVEP_MDM |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 1.56297961 | SSVEP_MDM |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 33.1 | ShallowConvNet |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 5.90452088 | ShallowConvNet |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 27.500000000000004 | EEGNet-8,2 |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 5.74253287 | EEGNet-8,2 |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 27.1 | TRCA |
| Brain Decoding | MAMEM3 MOABB | CO2 Emission (g) | 0.0317322511 | TRCA |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 4.44355459 | TRCA |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 25 | EEGITNet |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 6.796000050000001 | EEGITNet |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 24.8 | EEGNeX |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 22.5295867 | EEGNeX |
| Brain Decoding | MAMEM3 MOABB | Accuracy | 22.800000000000004 | CCA |
| Brain Decoding | MAMEM3 MOABB | CO2 Emission (g) | 0.00131271061 | CCA |
| Brain Decoding | MAMEM3 MOABB | training time (s) | 0.183953595 | CCA |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 39.36 | SSVEP_TS + LR |
| Brain Decoding | MAMEM2 MOABB | CO2 Emission (g) | 17.0932925 | SSVEP_TS + LR |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 840.129991 | SSVEP_TS + LR |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 34.8 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM2 MOABB | CO2 Emission (g) | 16.319102700000002 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 791.885326 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 26.32 | EEGNeX |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 180.9718512 | EEGNeX |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 25.840000000000003 | ShallowConvNet |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 1620.974344 | ShallowConvNet |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 24.56 | EEGNet-8,2 |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 26.034414199999997 | EEGNet-8,2 |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 23.12 | SSVEP_MDM |
| Brain Decoding | MAMEM2 MOABB | CO2 Emission (g) | 21.4845976 | SSVEP_MDM |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 1028.1009 | SSVEP_MDM |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 22.72 | EEGITNet |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 34.195504299999996 | EEGITNet |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 22.64 | TRCA |
| Brain Decoding | MAMEM2 MOABB | CO2 Emission (g) | 2.85556727 | TRCA |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 399.849453 | TRCA |
| Brain Decoding | MAMEM2 MOABB | Accuracy | 20.64 | CCA |
| Brain Decoding | MAMEM2 MOABB | CO2 Emission (g) | 0.10534236079999999 | CCA |
| Brain Decoding | MAMEM2 MOABB | training time (s) | 14.7508205 | CCA |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 67.1084639 | EEGNeX |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 197.02376239999998 | EEGNeX |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 58.0691632 | EEGITNet |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 39.6391611 | EEGITNet |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 54.5442871 | TRCA |
| Brain Decoding | MAMEM1 MOABB | CO2 Emission (g) | 1.785962026 | TRCA |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 250.07919099999998 | TRCA |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 53.70517730000001 | SSVEP_TS + LR |
| Brain Decoding | MAMEM1 MOABB | CO2 Emission (g) | 13.59719356 | SSVEP_TS + LR |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 698.7826769999999 | SSVEP_TS + LR |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 50.57987980000001 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM1 MOABB | CO2 Emission (g) | 12.962970100000001 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 657.646162 | SSVEP_TS + SVM |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 43.029499 | EEGNet-8,2 |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 23.1336158 | EEGNet-8,2 |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 36.03516260000001 | ShallowConvNet |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 3920.421198 | ShallowConvNet |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 27.3128415 | SSVEP_MDM |
| Brain Decoding | MAMEM1 MOABB | CO2 Emission (g) | 16.1321347 | SSVEP_MDM |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 824.9421399999999 | SSVEP_MDM |
| Brain Decoding | MAMEM1 MOABB | Accuracy | 21.7420669 | CCA |
| Brain Decoding | MAMEM1 MOABB | CO2 Emission (g) | 0.0819434059 | CCA |
| Brain Decoding | MAMEM1 MOABB | training time (s) | 11.47441585 | CCA |
| Brain Decoding | Wang2016 MOABB | Accuracy | 98.97058994117646 | TRCA |
| Brain Decoding | Wang2016 MOABB | CO2 Emission (g) | 0.35510938491176475 | TRCA |
| Brain Decoding | Wang2016 MOABB | training time (s) | 51.168803294117644 | TRCA |
| Brain Decoding | Wang2016 MOABB | Accuracy | 88.22303944117647 | CCA |
| Brain Decoding | Wang2016 MOABB | CO2 Emission (g) | 0.25679755529411763 | CCA |
| Brain Decoding | Wang2016 MOABB | training time (s) | 35.958232058823526 | CCA |
| Brain Decoding | Wang2016 MOABB | Accuracy | 67.52450958823529 | SSVEP_TS + LR |
| Brain Decoding | Wang2016 MOABB | CO2 Emission (g) | 0.014626497973529412 | SSVEP_TS + LR |
| Brain Decoding | Wang2016 MOABB | training time (s) | 23.87455808235294 | SSVEP_TS + LR |
| Brain Decoding | Wang2016 MOABB | Accuracy | 59.58333323529412 | SSVEP_TS + SVM |
| Brain Decoding | Wang2016 MOABB | CO2 Emission (g) | 0.016185734488235293 | SSVEP_TS + SVM |
| Brain Decoding | Wang2016 MOABB | training time (s) | 27.371970164705882 | SSVEP_TS + SVM |
| Brain Decoding | Wang2016 MOABB | Accuracy | 54.76715661764706 | SSVEP_MDM |
| Brain Decoding | Wang2016 MOABB | CO2 Emission (g) | 0.014037612047058824 | SSVEP_MDM |
| Brain Decoding | Wang2016 MOABB | training time (s) | 19.76784232352941 | SSVEP_MDM |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 97.77777777777777 | TRCA |
| Brain Decoding | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.25070370964814814 | TRCA |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 35.42286275 | TRCA |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 93.80555555555556 | EEGNeX |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 191.3021131111111 | EEGNeX |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 90.97222222222221 | CCA |
| Brain Decoding | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.010103892560185186 | CCA |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 1.415124501851852 | CCA |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 89.44444444444444 | SSVEP_TS + LR |
| Brain Decoding | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11153871532407408 | SSVEP_TS + LR |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 15.61881037037037 | SSVEP_TS + LR |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 88.58333333333334 | SSVEP_TS + SVM |
| Brain Decoding | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.10468667306481481 | SSVEP_TS + SVM |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 14.65914484722222 | SSVEP_TS + SVM |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 86.8425925925926 | EEGITNet |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 23.24565614351852 | EEGITNet |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 74.81818181818181 | SSVEP_MDM |
| Brain Decoding | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11398800675324675 | SSVEP_MDM |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 15.961555350649352 | SSVEP_MDM |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 69.3611111111111 | ShallowConvNet |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 33.26947674074074 | ShallowConvNet |
| Brain Decoding | Lee2019-SSVEP MOABB | Accuracy | 64.42592592592592 | EEGNet-8,2 |
| Brain Decoding | Lee2019-SSVEP MOABB | training time (s) | 13.879997119444445 | EEGNet-8,2 |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 70.89385925 | SSVEP_MDM |
| Brain Decoding | Kalunga2016 MOABB | CO2 Emission (g) | 0.002602688875 | SSVEP_MDM |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 0.16333881583333335 | SSVEP_MDM |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 70.86472991666666 | SSVEP_TS + LR |
| Brain Decoding | Kalunga2016 MOABB | CO2 Emission (g) | 0.0021011706583333335 | SSVEP_TS + LR |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 0.13897842158333332 | SSVEP_TS + LR |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 68.94949916666667 | SSVEP_TS + SVM |
| Brain Decoding | Kalunga2016 MOABB | CO2 Emission (g) | 0.0022165178750000003 | SSVEP_TS + SVM |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 0.130249698 | SSVEP_TS + SVM |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 54.420178166666666 | ShallowConvNet |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 6.559657266666666 | ShallowConvNet |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 43.5187945 | EEGNet-8,2 |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 7.561273683333333 | EEGNet-8,2 |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 34.20391266666667 | TRCA |
| Brain Decoding | Kalunga2016 MOABB | CO2 Emission (g) | 0.0019902593416666666 | TRCA |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 0.27882464583333333 | TRCA |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 33.87684483333333 | CCA |
| Brain Decoding | Kalunga2016 MOABB | CO2 Emission (g) | 0.0005601459183333333 | CCA |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 0.07858161266666668 | CCA |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 31.35680125 | EEGNeX |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 10.771992875 | EEGNeX |
| Brain Decoding | Kalunga2016 MOABB | Accuracy | 24.79779866666667 | EEGITNet |
| Brain Decoding | Kalunga2016 MOABB | training time (s) | 6.9656671333333335 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 59.934408990825695 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.013059559739449542 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 25.291020102752295 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 58.55441266055046 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0010041190067889907 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 2.2208920137614676 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 58.458600238532114 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0243752586293578 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 48.31867250642202 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 56.68057317948718 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.330426302205128 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 92.28611607692308 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 55.0438009174312 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002020601044036697 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 3.204224353211009 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 48.51775490825688 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.9742764488073394 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 1190.5449858715597 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 47.73427576146789 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0054728938412844045 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 8.780583234862386 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 46.84880671559633 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.005456309299082569 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 8.482141944036696 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 45.493503000000004 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.06618156533027524 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 68.7581273853211 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 42.96454042201835 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.003281270780733945 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 6.167569839633027 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 41.87124210091743 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.038677560009174314 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 15.891879321100918 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 29.03593889908257 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.024848891426605502 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 10.598362683486238 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 27.682707357798165 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.034966375495412844 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 14.11812210091743 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 26.68615756880734 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.059308609688073395 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 22.783741321100916 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 26.154798385321104 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4149273854862385 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 13.559821752293578 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | Accuracy | 25.790262357798166 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.7750069540733944 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 18.127433243119267 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 64.3835718 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 6.1498658200000005 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 335.21023 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 63.840714199999994 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0319534623 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 34.0226515 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 62.762142 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00205973584 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 2.12094548 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 61.469286499999995 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.014714955200000001 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 15.092744999999999 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 56.9400009 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00332279971 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 3.4260148399999997 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 48.9364276 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 22.743277258 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 100.2113981 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 45.212857299999996 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.030076381000000003 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 37.9020129 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 44.0792858 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.5357583659999999 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 677.4126650000001 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 39.4492859 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0037056161800000003 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 4.84518394 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 38.8442857 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00369364373 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 4.82886682 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 35.3514286 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 10.5262206565 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 34.2388724 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 33.4078569 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00188059405 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 2.01196917 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 30.215714 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 35.190156514 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 126.255782 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 25.7807146 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 13.394392257000002 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 43.4866037 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 24.1678569 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 30.440530905000003 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 73.0829022 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | Accuracy | 17.9464288 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 15.281205185 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 47.42458 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 69.79166675 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0013501269012499999 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 2.749322665 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 69.5833345 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.18950154875 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 7.6877846125 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 69.16666637499999 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000786763229625 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.85145594625 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 67.916665875 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00173950673625 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 3.3987408749999997 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 65.62500112500001 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00038144418074999997 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 0.743955544625 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 65 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.005079346375 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 19.6318726375 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 62.91666625 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.03446902725 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 44.612727875000004 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 61.041666500000005 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0005938407575 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.0782176175 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 60.62500012500001 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0003630056075 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 0.6206318012500001 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 60.62499999999999 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000925614838125 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.6782885705 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 50.00000075 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.21283768775 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 12.9602863125 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 43.958333875 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.673163054 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 9.24752825 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 37.708333625 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.1961726155 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 9.8963939375 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 37.7083335 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.546965218875 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 8.58771105 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 36.041667 | EEGITNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.109086602625 | EEGITNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 9.4757763125 | EEGITNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | Accuracy | 34.166666875 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.198906455875 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 9.205565762500001 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 77.88163016666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 1.7743017888888888 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 73.50212961111112 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 72.47227177777778 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.394738715 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 45.877247277777776 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 72.38119294444444 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006551190227777778 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 13.852831627777778 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 71.97351649999999 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004666705854444444 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 19.167550810555554 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 70.75586455555556 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01799459135 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 66.23056458333332 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 70.14149394444445 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.014329298037222223 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 59.714323183333335 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 66.88411633333334 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1285738541111111 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 147.7146591111111 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 66.52618122222222 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004104928794444445 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 5.445951 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 66.3070505 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0028627887866666665 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 9.741079583888888 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 65.994152 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010921193731666667 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 52.462251144444444 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 61.600793277777775 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.012491149514444445 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 75.09591532444445 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 60.46380244444445 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1871718811111111 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 21.723354222222223 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 45.61672333333334 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.5342137127777778 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 62.59321944444444 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 41.64616544444444 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.28639946055555554 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 33.0790875 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 35.54681733333334 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1578935777777778 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 18.299775611111112 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | Accuracy | 35.29273355555556 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.15884736222222223 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 18.38852738888889 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 85.85246441666668 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.1941063975 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 7.277364225 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 85.02304108333334 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.21728041750000002 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 24.664789916666667 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 84.87930308333334 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.004125581083333333 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 14.9374373825 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 84.53929741666667 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.025638485455833332 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 75.6071288 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 83.65528725 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.013120034294166666 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 39.13084056666667 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 83.33782725 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.16457950333333335 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 18.622367166666667 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 83.08474258333334 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.04421750124999999 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 129.06390283333334 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 83.07198441666667 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.010749338934166667 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 71.767263065 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 82.9630775 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.008406058218333333 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 46.6342523525 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 82.06140125 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0014094379383333333 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 8.307476150833333 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 81.98970291666666 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00143389045 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 1.8146779000000002 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 76.04754891666667 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0013000749791666668 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 8.044291825 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 56.41506 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.29802479833333334 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 34.04211566666667 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 55.691373 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.11693505166666666 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 13.242306708333333 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 50.67784558333334 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.16801267050000002 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 19.01079075 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | Accuracy | 37.193690833333335 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.12480563316666667 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 14.080227958333333 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 85.52905985714287 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.16102813214285713 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 86.77469099999999 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 85.39824135714285 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 20.32321697142857 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 707.9741635714284 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 85.13492092857142 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.612351642857143 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 1877.5478428571428 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 84.59829828571428 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0075348416357142855 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 4.9577661214285715 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 84.41288664285715 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04492253178571428 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 23.104729499999998 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 82.97360807142857 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.09652152407142857 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 61.4208665 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 76.98508007142857 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.9416739878571428 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 214.51948785714285 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 75.93963142857143 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.1834183317857143 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 181.90692642857144 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 75.88554942857144 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.8806029271428572 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 531.3518721428571 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 72.97147700000001 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004620156871428571 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 3.027175342857143 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 72.8150212857143 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004526741521428572 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 2.9170686285714287 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 71.11233471428572 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.0679361071428572 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 471.15728 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 70.44199514285714 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.478115302857143 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 336.80249142857144 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 67.55850299999999 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 4.719508371428572 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 1075.1257621428572 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 56.77987328571429 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.7812169435714285 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 405.86182285714284 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | Accuracy | 52.03144735714286 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.007416166485714286 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 4.819618021428572 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 68.4798674678899 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4211595544036697 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 14.023694665137615 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 68.45973491743119 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0030451742727522933 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 6.395441841284404 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 68.17686030275229 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002011187666788991 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.376171044495413 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 67.9113149174312 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002922431799908257 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 6.133613628073395 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 67.28338431192661 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016746719404036696 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.225256745229358 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 67.2357288440367 | TRCSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002136693423082569 | TRCSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.659003014128441 | TRCSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 65.74796130275229 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0015942293279908256 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.20135004233945 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 65.71304793577983 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0033223538248623855 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 7.022697680733945 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 65.1939347614679 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.6320094714220184 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 12.345875044954127 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 65.07415901834862 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0012151826062018348 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 3.403307553027523 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 62.34913353211009 | LogVar + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016599262179357798 | LogVar + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 3.982814494036697 | LogVar + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 61.938583036697246 | LogVar + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0024540891949541284 | LogVar + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 5.312168379816514 | LogVar + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 59.57492357798165 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.1069343064220183 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 9.95131664587156 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 59.552752311926604 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.5409163972477065 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 12.154883428440368 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 58.44724773394495 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2997174272477064 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 1.6316544247706422 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 55.90341492660551 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8180092174311926 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 13.434462706422018 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 54.75993883486239 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0019827723381192664 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.593253893211009 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 52.70922529357799 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.407468192660551 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 11.497989633027524 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 51.19622834862385 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8861695403669723 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 12.67985970183486 | EEGNeX |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 82.0049287111111 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.02593451466666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.439084654222222 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 80.39444377777778 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.14387416055555555 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 0.783375099111111 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 80.0956668888889 | CSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005452296241333334 | CSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.2460348456222223 | CSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 80.09376537777779 | TS + LR |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006557710575999999 | TS + LR |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.7434176553111111 | TS + LR |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.87291397777778 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006216743171333333 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.8661370398 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.78218279999999 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006737686001777777 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.457821241711111 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.75479504444445 | TS + EL |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0010797430764444445 | TS + EL |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 2.079450579777778 | TS + EL |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.41006457777777 | TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.001196510487111111 | TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 2.356883378 | TS + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.28086771111111 | FgMDM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006603817830888889 | FgMDM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.5159122454666667 | FgMDM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 79.27025824444443 | CSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.004687019133333334 | CSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 6.61830888 | CSP + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 78.50732679999999 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005384169830822222 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 1.2824246142888889 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 78.29806786666667 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0008958152281111112 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 2.0932973742222223 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 77.65547846666666 | MDM |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0003528847734 | MDM |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 0.9042913831777778 | MDM |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 72.35971368888889 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.05743548577777778 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 6.921017688888888 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 72.35753537777777 | DeepConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.08229932173333333 | DeepConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 9.503357968888889 | DeepConvNet |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 69.69639757777777 | EEGTCNet |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.12710436082222223 | EEGTCNet |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 15.25518438888889 | EEGTCNet |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 69.498559 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.07430071106666666 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 8.935735724444443 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 66.52779386666666 | EEGNeX |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.10765803022222223 | EEGNeX |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 13.068636999999999 | EEGNeX |
| Brain Computer Interface | BNCI2014-004 MOABB | AUC-ROC | 65.09554904444444 | EEGITNet |
| Brain Computer Interface | BNCI2014-004 MOABB | CO2 Emission (g) | 0.09232083362222221 | EEGITNet |
| Brain Computer Interface | BNCI2014-004 MOABB | training time (s) | 11.108478222222223 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 85.2855546 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.01054370724 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 16.70190309 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 83.835458 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 7.47882039 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 329.502181 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 83.7230547 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.01144170013 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 19.7101636 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 83.6191015 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.007658937971 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 17.19314084 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 80.7190701 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.003059077913 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 5.572459653 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 80.16262729999998 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0042039635710000006 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 8.469146077 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 79.8404006 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0187107375 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 25.68750405 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 79.32908119999999 | TRCSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.001778520405 | TRCSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 3.318742769 | TRCSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 79.0972572 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 7.357279468 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 61.683436400000005 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 78.41374400000001 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00607642027 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 10.29490904 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 76.81202040000001 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.589712181 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 3.2107585999999997 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 74.852519 | LogVar + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00979238033 | LogVar + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 19.02302114 | LogVar + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 74.1323346 | LogVar + LDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.002844444774 | LogVar + LDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 5.320173393999999 | LogVar + LDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 73.6449296 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 2.3282129534 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 34.809638 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 66.4564741 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.7898681898000001 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 19.67945195 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 63.16485980000001 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.5258725022999999 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 28.1203618 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 59.3464601 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 1.1843646793 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 20.2672368 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 58.801497999999995 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.004551940515 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 8.631213726 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 57.965879799999996 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 2.6715904881 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 42.3490198 | EEGNeX |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 89.2466661 | TS + EL |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.269148976 | TS + EL |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 243.142401 | TS + EL |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 88.0777776 | TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.28341764999999997 | TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 265.222582 | TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 87.60000099999999 | TS + LR |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0139535835 | TS + LR |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 34.60417205 | TS + LR |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 87.42888820000002 | ACM + TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 6.55720808 | ACM + TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 325.665074 | ACM + TS + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 87.0177778 | FgMDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.15610860310000002 | FgMDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 85.13785279999999 | FgMDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 86.52888920000001 | ShallowConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 2.3070343 | ShallowConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 277.2352575 | ShallowConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 83.0155557 | EEGNet-8,2 |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9723642659999999 | EEGNet-8,2 |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 117.19713259999999 | EEGNet-8,2 |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 82.382222 | DeepConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9234428940000001 | DeepConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 110.56912460000001 | DeepConvNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 81.7311101 | LogVar + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.00362474352 | LogVar + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 6.762669579999999 | LogVar + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 79.6511118 | FBCSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 21.6308037 | FBCSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 117.8105055 | FBCSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 78.7111117 | LogVar + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000772556251 | LogVar + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 4.040722504 | LogVar + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 78.2866669 | TRCSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.002421635666 | TRCSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 14.640627636 | TRCSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 77.8066665 | CSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0356465945 | CSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 37.7887083 | CSP + SVM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 76.4377781 | CSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000984520588 | CSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 4.92442061 | CSP + LDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 76.4022231 | DLCSPauto + shLDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.001667790323 | DLCSPauto + shLDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 8.404077422 | DLCSPauto + shLDA |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 72.18666590000001 | EEGITNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.8872510549999999 | EEGITNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 106.55474389999999 | EEGITNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 68.4511113 | EEGTCNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 1.518727995 | EEGTCNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 183.107304 | EEGTCNet |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 64.291111 | MDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.01076914422 | MDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 14.947136800000001 | MDM |
| Brain Computer Interface | GrosseWentrup2009 MOABB | AUC-ROC | 56.99555540000001 | EEGNeX |
| Brain Computer Interface | GrosseWentrup2009 MOABB | CO2 Emission (g) | 3.4729265 | EEGNeX |
| Brain Computer Interface | GrosseWentrup2009 MOABB | training time (s) | 422.45747300000005 | EEGNeX |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 72.29885057471265 | CSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.0031280651400344825 | CSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 6.032976467126437 | CSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 70.97701149425288 | ACM + TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.44081082241379316 | ACM + TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 18.935673712643677 | ACM + TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 70.86206896551724 | FgMDM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.006155834353908047 | FgMDM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 12.416171135632183 | FgMDM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 70.3448275862069 | DLCSPauto + shLDA |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.002772973099505747 | DLCSPauto + shLDA |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 5.865132493643678 | DLCSPauto + shLDA |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 70.11494252873564 | CSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.005158950352873563 | CSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 9.313418644827586 | CSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 69.3103448275862 | TS + LR |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.0020542086796666668 | TS + LR |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 4.086728204942529 | TS + LR |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 68.67816091954023 | TS + EL |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.00418902949183908 | TS + EL |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 7.833182418390805 | TS + EL |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 68.44827586206897 | TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.00357418835862069 | TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 7.287723882183908 | TS + SVM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 67.29885057471265 | TRCSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.0028938624342988504 | TRCSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 5.785437376344828 | TRCSP + LDA |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 65.63218390804599 | FBCSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.05493400862068966 | FBCSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 0.29933049333333334 | FBCSP + SVM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 62.98850574712643 | MDM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.002936805686195402 | MDM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 6.130959453310345 | MDM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 61.7816091954023 | LogVar + LDA |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.0037351209763448272 | LogVar + LDA |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 7.392233189712644 | LogVar + LDA |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 61.37931034482759 | LogVar + SVM |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 0.00378480009954023 | LogVar + SVM |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 7.829565021494252 | LogVar + SVM |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 60.80459770114942 | ShallowConvNet |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 13.571865731034483 | ShallowConvNet |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 73.86500129885057 | ShallowConvNet |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 57.98850574712644 | EEGNet-8,2 |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 9.758972163218392 | EEGNet-8,2 |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 53.113962264367814 | EEGNet-8,2 |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 56.03448275862068 | DeepConvNet |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 5.162565710344827 | DeepConvNet |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 28.097837931034483 | DeepConvNet |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 52.18390804597701 | EEGITNet |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 8.672446098850575 | EEGITNet |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 47.200400390804596 | EEGITNet |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 51.26436781609196 | EEGTCNet |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 21.768854620689655 | EEGTCNet |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 118.47680619540229 | EEGTCNet |
| Brain Computer Interface | Shin2017A MOABB | AUC-ROC | 49.02298850574712 | EEGNeX |
| Brain Computer Interface | Shin2017A MOABB | CO2 Emission (g) | 16.20613807471264 | EEGNeX |
| Brain Computer Interface | Shin2017A MOABB | training time (s) | 88.2030973908046 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 88.70422614285715 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.49335965 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 327.9551457142857 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 88.64610935714285 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.044947839499999996 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 27.018976428571428 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 87.64284414285714 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020339250814285715 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 11.905010892857144 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 87.21996714285714 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005596339442857143 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 8.187318035714286 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 86.71347114285714 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.10021865657142857 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 67.09638471428572 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 84.81764307142858 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.48519369357142855 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 268.71988714285715 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 81.44109821428572 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 25.420092035714283 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 138.46111907142856 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 81.2303262857143 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19315654464285714 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 109.64171142857143 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 80.20351621428571 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.13953920821428573 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 87.55805742857142 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 79.41504057142856 | LogVar + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020349772242857143 | LogVar + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 22.148402514285713 | LogVar + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 79.23637321428572 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.032244818214285716 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 23.25204464285714 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 79.1367927142857 | TRCSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.018842971650000002 | TRCSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 16.598896885714286 | TRCSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 78.43861257142856 | LogVar + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014727059297142856 | LogVar + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 10.265415285714285 | LogVar + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 77.23480071428571 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005735273075 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 10.583879442857143 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 77.02151357142857 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005144324647142857 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 10.114322803571428 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 75.61966142857143 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.43859431071428573 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 261.3786007142857 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 74.66472221428572 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19887899714285712 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 113.00491099999999 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 68.58403092857142 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.6476672135714285 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 341.07117250000005 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 61.52606428571429 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00449722365 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 5.6453727 | MDM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 76.2289796153846 | TS + EL |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.008755807778846155 | TS + EL |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 13.766507201923076 | TS + EL |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 75.52711013461538 | ACM + TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 1.8557469153846153 | ACM + TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 62.31514830769231 | ACM + TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 75.00852038461538 | TS + LR |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.0018744818367307692 | TS + LR |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 6.214885324999999 | TS + LR |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 74.61810898076924 | TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.008696662651923077 | TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 12.687089688461539 | TS + SVM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 73.83557690384616 | ShallowConvNet |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.058521977903846154 | ShallowConvNet |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 46.979712846153845 | ShallowConvNet |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 72.89826388461537 | FgMDM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.002231383398076923 | FgMDM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 4.56839715 | FgMDM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 71.92080661538462 | CSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.013585275634615385 | CSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 20.833295817307693 | CSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 71.84767628846154 | TRCSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.001189626241 | TRCSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 3.8611871384615384 | TRCSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 71.67248932692308 | DeepConvNet |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.2637025025 | DeepConvNet |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 60.08802442307693 | DeepConvNet |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 71.38116988461539 | CSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.0011575846306923075 | CSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 3.884574095846154 | CSP + LDA |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 71.15633009615384 | DLCSPauto + shLDA |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.001064577328173077 | DLCSPauto + shLDA |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 3.4957703001923077 | DLCSPauto + shLDA |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 67.90934826923076 | FBCSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.003133048219230769 | FBCSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 2.7608346807692308 | FBCSP + SVM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 66.78533653846154 | EEGNet-8,2 |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.09790713498076922 | EEGNet-8,2 |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 22.314706884615383 | EEGNet-8,2 |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 65.46407580769231 | LogVar + SVM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.0015806333348076923 | LogVar + SVM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 4.417776592307693 | LogVar + SVM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 64.49059826923077 | LogVar + LDA |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.0009515043146153847 | LogVar + LDA |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 2.7242354466346157 | LogVar + LDA |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 63.39276176923077 | MDM |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.00237880536 | MDM |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 6.796549341730769 | MDM |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 58.33552344230769 | EEGTCNet |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.1190211419423077 | EEGTCNet |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 27.13974953846154 | EEGTCNet |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 57.196153846153855 | EEGITNet |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.11474572860576923 | EEGITNet |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 26.596911269230766 | EEGITNet |
| Brain Computer Interface | Cho2017 MOABB | AUC-ROC | 53.279941384615384 | EEGNeX |
| Brain Computer Interface | Cho2017 MOABB | CO2 Emission (g) | 0.2174445951923077 | EEGNeX |
| Brain Computer Interface | Cho2017 MOABB | training time (s) | 49.56457763461538 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 91.87717316666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8832741538888889 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 37.19322716666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 87.4123206111111 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.023651943657777775 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 91.08604166666666 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 86.52796605555557 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03423917689166667 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 58.82106999444444 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 86.47732361111112 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.021483784244444443 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 40.16215047222222 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 86.44255583333333 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010235186905555556 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 23.73425226666667 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 86.16591022222222 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23767624 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 28.300448333333332 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 84.4368855 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.30146339333333333 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 1.6411384872222223 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 83.07369627777778 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03449044713888889 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 60.17366931666667 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 82.74829922222222 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006283899536444444 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 21.795549848888886 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 82.33597905555557 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01768477408111111 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 26.033208126666665 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 82.07331861111112 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.11586982311111112 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 13.686492722222221 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 81.69425572222222 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.02021859091111111 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 42.17484379888889 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 79.83560116666666 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.008658991335722222 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 14.69900212111111 | TRCSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 77.95615972222222 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.005686139496333334 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 13.134125769444445 | LogVar + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 77.15268383333334 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.12332580900000001 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 14.563619111111112 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 75.86092177777778 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.007728553635555556 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 15.609176037777777 | LogVar + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 75.27399844444444 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1597577938888889 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 18.952416222222222 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 67.46182961111111 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.18110872972222222 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 20.17755577777778 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 66.28193516666667 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.31804718277777777 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 38.14933605555555 | EEGNeX |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 84.74444444444444 | TS + EL |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.002646718319444444 | TS + EL |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 4.678475692592593 | TS + EL |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 84.16666666666667 | ACM + TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.8164949121481482 | ACM + TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 29.706403990740743 | ACM + TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 83.57037037037037 | TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0024145104012962965 | TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 5.273111012962963 | TS + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 83.09259259259258 | TS + LR |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0008697607500925927 | TS + LR |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 2.4829364574074075 | TS + LR |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 81.3425925925926 | FgMDM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0021175731353703705 | FgMDM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 5.031711893518518 | FgMDM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 77.27037037037037 | CSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.005258449698148148 | CSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 8.139176210185186 | CSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 76.88148148148147 | CSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0012470851392592593 | CSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 3.3465501966666666 | CSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 76.68703703703704 | DLCSPauto + shLDA |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0014866114661481482 | DLCSPauto + shLDA |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 4.686696781111111 | DLCSPauto + shLDA |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 76.2611111111111 | TRCSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.001290584364037037 | TRCSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 3.8623176347222223 | TRCSP + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 75.82777777777778 | ShallowConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0627169262962963 | ShallowConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 52.18373611111111 | ShallowConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 75.07222222222222 | FBCSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.4983456616666667 | FBCSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 2.7125740925925927 | FBCSP + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 73.83148148148148 | LogVar + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0023018676362962964 | LogVar + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 4.534608688425926 | LogVar + SVM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 70.64722222222223 | DeepConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.08747840010185186 | DeepConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 19.933118574074072 | DeepConvNet |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 70.22962962962963 | MDM |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.00100529917 | MDM |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 3.1416363901851856 | MDM |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 66.21296296296296 | LogVar + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.0026458692239444445 | LogVar + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 6.251461617777778 | LogVar + LDA |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 65.67222222222222 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.06521628261574074 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 14.961433282407407 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 59.166666666666664 | EEGITNet |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.08459861206481481 | EEGITNet |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 19.277117560185186 | EEGITNet |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 55.681481481481484 | EEGTCNet |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.07880292099074075 | EEGTCNet |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 17.962674342592592 | EEGTCNet |
| Brain Computer Interface | Lee2019-MI MOABB | AUC-ROC | 55.12222222222223 | EEGNeX |
| Brain Computer Interface | Lee2019-MI MOABB | CO2 Emission (g) | 0.17330265775 | EEGNeX |
| Brain Computer Interface | Lee2019-MI MOABB | training time (s) | 39.780105 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 95.65019116666667 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.1549817675 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 18.007408791666666 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 95.18760766666666 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.13623877575 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 4.912889991666667 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.84044641666665 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.11864727041666667 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 13.72778775 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.41753624999998 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.11453622516666667 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 13.273857999999999 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.35313333333333 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0018601271058333332 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 3.7908793 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.16005008333333 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0007884223154166666 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 2.283726725 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 93.533263 | TRCSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0009910642599999999 | TRCSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 2.9101597717500005 | TRCSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 93.37149766666667 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0025104166216666666 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 5.204099866666667 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 93.14890566666666 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0006859483835833334 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 1.3644024541666664 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 92.96259333333333 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.006482190183333333 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 10.441263425 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 92.63712633333334 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.12367576549999999 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.6734122016666667 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 92.55652333333333 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0033206487941666667 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 6.522374073333334 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 92.5358025 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0012211545708333334 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 2.4993543233333333 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 90.7018375 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0022293055558333334 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 5.702021107499999 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 88.46995433333333 | LogVar + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0020454070625 | LogVar + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 5.637304889999999 | LogVar + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 88.38607883333333 | LogVar + LDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0012580402871666667 | LogVar + LDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 3.2995239900000004 | LogVar + LDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 82.2366395 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.16067158750000002 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 16.823401416666666 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 69.41324841666666 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.12495182708333334 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 14.432597083333334 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 61.559105 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.17477492000000003 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 20.40160175 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 97.25585694444443 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8372758266666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 33.48545766666667 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 94.44897994444445 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0007312805027777778 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 2.885060657222222 | TS + LR |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 94.44784577777777 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0018545968405555553 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 4.854808299999999 | TS + EL |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 94.00944755555555 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0013835059555555556 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 3.3391828388888887 | TS + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 93.54648549999999 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.24335663111111114 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 1.324833988888889 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 93.52191866666666 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0006420009155555556 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 3.5817672655555555 | FgMDM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 93.00151144444445 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23494162666666668 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 27.16444661111111 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 91.5359025 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00046965705572222225 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 2.096713888888889 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 91.51511638888888 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0008947458374444445 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 2.750061953611111 | CSP + LDA |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 91.03968261111112 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0063117480444444445 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 11.314337022222222 | CSP + SVM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 89.12547266666667 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00043345056416666666 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 1.5749139627777777 | MDM |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 88.55026438888889 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.16107902277777777 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 18.505341833333333 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 88.27324277777778 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1293751948888889 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 14.970135055555554 | DeepConvNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 75.98148133333333 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.14507292438888889 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 16.651739888888887 | EEGITNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 75.20748333333333 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.22110831444444445 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 25.485177055555553 | EEGTCNet |
| Brain Computer Interface | BNCI2014-001 MOABB | AUC-ROC | 64.35903111111112 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | CO2 Emission (g) | 0.2859660588888889 | EEGNeX |
| Brain Computer Interface | BNCI2014-001 MOABB | training time (s) | 33.142690944444446 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 93.39429239999998 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 2.92276621 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 101.6704931 | ACM + TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 92.3246172 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.006040798 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 11.57989181 | TS + EL |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 91.8383288 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0059158554199999994 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 9.11110455 | TS + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 91.5263066 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.001118637826 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 4.60279952 | TS + LR |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.696109 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 19.651363984 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 84.42076999999999 | ShallowConvNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.6372764 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0101869405 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 14.5114632 | CSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.59406740000001 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0004474954558 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 2.7403618635 | CSP + LDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.55835479999999 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.00180466725 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 3.8331035200000003 | FgMDM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.4768809 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.0007442022196 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 4.568564723 | DLCSPauto + shLDA |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 88.26785749999999 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.568418502 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 3.09451051 | FBCSP + SVM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 79.28683079999999 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 19.414860764000004 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 35.9970033 | DeepConvNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 78.1468433 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 4.84414613 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 24.251992 | EEGNet-8,2 |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 65.18000699999999 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 0.000844543333 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 2.796476937 | MDM |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 62.538903499999996 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 7.962777576000001 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 19.2195519 | EEGITNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 62.3676652 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 7.512717858499999 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 29.570441 | EEGTCNet |
| Brain Computer Interface | Weibo2014 MOABB | AUC-ROC | 60.17745599999999 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | CO2 Emission (g) | 16.597322944000002 | EEGNeX |
| Brain Computer Interface | Weibo2014 MOABB | training time (s) | 44.7978774 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 97.20956825 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.12496935208333333 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 4.858959566666667 | ACM + TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 97.06439391666666 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.1509912575 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 18.427412083333333 | ShallowConvNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 96.76458083333334 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00005349374241666666 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.08235803066666667 | TS + LR |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 96.58612958333333 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0005289931975 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.7517524533333333 | TS + EL |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 96.10875391666666 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.0005871264258333333 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.7894516191666666 | TS + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 96.03910916666666 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00010140754249999999 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.23585249774999997 | FgMDM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 95.91615191666666 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.08542806208333333 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 10.515160691666667 | DeepConvNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 95.19816666666668 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00005386587691666667 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.12567347733333334 | CSP + LDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.95107591666667 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00316684425 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 4.423639016666667 | CSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.63445591666667 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.13053382583333334 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.7107954383333334 | FBCSP + SVM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.58252499999999 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.09276203341666667 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 11.2586846 | EEGNet-8,2 |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 94.43122416666667 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00005045180425 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.10749997658333332 | DLCSPauto + shLDA |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 92.21307508333332 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.00003917033591666667 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 0.062127622166666674 | MDM |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 85.46364075 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.13808337241666666 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 16.91200925 | EEGTCNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 80.40247383333333 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.10409523749999999 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 12.826676 | EEGITNet |
| Brain Computer Interface | Zhou2016 MOABB | AUC-ROC | 64.79907375 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | CO2 Emission (g) | 0.17851248916666665 | EEGNeX |
| Brain Computer Interface | Zhou2016 MOABB | training time (s) | 21.63750320833333 | EEGNeX |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 92.30178571428571 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.38974278 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 16.371186375 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 91.56785714285715 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.9452996678571429 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 4.884339850000001 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 91.40714285714286 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.240711847 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 29.228367535714284 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 91.19107142857142 | TS + EL |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0021765681464285713 | TS + EL |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 3.0829317250000003 | TS + EL |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 91.09285714285714 | TS + LR |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0016561550864285714 | TS + LR |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 3.2331909737499998 | TS + LR |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 90.80535714285715 | TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.002693355064285714 | TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 4.09123845 | TS + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 90.43214285714286 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.14237826092857142 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 17.193978785714286 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 90.18214285714286 | FgMDM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000829699048642857 | FgMDM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 1.5857523525357142 | FgMDM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 89.19285714285714 | CSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.009411417503571428 | CSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 11.710567267857144 | CSP + SVM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 88.87321428571428 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0005799335712857143 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 1.1508428444642858 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 88.52321428571429 | CSP + LDA |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000595994413607143 | CSP + LDA |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 1.07737538725 | CSP + LDA |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 88.12321428571428 | DeepConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.12839999017857143 | DeepConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 15.592928589285714 | DeepConvNet |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 86.20357142857144 | MDM |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0007177980582857143 | MDM |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 1.3408162827142858 | MDM |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 77.21160714285715 | EEGTCNet |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.18671340807142858 | EEGTCNet |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 22.635748839285714 | EEGTCNet |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 72.33571428571429 | EEGNeX |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.34515593464285715 | EEGNeX |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 41.56138553571429 | EEGNeX |
| Brain Computer Interface | BNCI2015-001 MOABB | AUC-ROC | 71.94642857142857 | EEGITNet |
| Brain Computer Interface | BNCI2015-001 MOABB | CO2 Emission (g) | 0.16193158389285714 | EEGITNet |
| Brain Computer Interface | BNCI2015-001 MOABB | training time (s) | 19.546656482142858 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.9680807142857 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.63215142142857 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 330.0909378571428 | ACM + TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.72027014285713 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3588719162857143 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 349.39148821428574 | TS + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.59824428571429 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014680511778571428 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 13.988061071428572 | TS + LR |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.56472542857144 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3353505528571428 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 327.06053857142854 | TS + EL |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.47625814285713 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.089541701 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 82.60363664285714 | FgMDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 98.05647592857143 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 40.59940300142857 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 320.2012192857143 | ShallowConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 97.50308285714286 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04334756092857143 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 45.233243214285714 | CSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 97.39603707142858 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 36.42587592857143 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 198.47335871428572 | FBCSP + SVM |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 97.14958464285715 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 29.02176669 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 280.00296785714283 | EEGTCNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 97.02462435714286 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00044260885642857144 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 0.5883504935714285 | CSP + LDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 96.95337171428572 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0004114472164285714 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 0.5423086028571429 | DLCSPauto + shLDA |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 96.49739557142858 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.778447587857142 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 91.89510485714287 | EEGNet-8,2 |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 96.04328542857142 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.278272536428571 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 130.05448907142858 | EEGITNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 95.901341 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.213161058571428 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 106.127537 | DeepConvNet |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 89.48676185714287 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 42.28841732428571 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 464.49325142857145 | EEGNeX |
| Brain Computer Interface | Schirrmeister2017 MOABB | AUC-ROC | 84.6734955 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.012343685785714287 | MDM |
| Brain Computer Interface | Schirrmeister2017 MOABB | training time (s) | 11.868311578571427 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 94.27232417431192 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002292956512844037 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.69788353027523 | TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 94.09464829357799 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0023048844770642203 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 4.660472736697248 | TS + EL |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 93.72140674311926 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.3743661817798165 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 13.275803577981652 | ACM + TS + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 93.14561674311926 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0011862718552201835 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 3.9450754762385323 | TS + LR |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 89.6715086146789 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016952853321100917 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 3.6619959064220184 | FgMDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 88.03649339449541 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.004252216568807339 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 7.574546786238533 | CSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 86.80902140366973 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006039077076697248 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 1.9964198499449541 | DLCSPauto + shLDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 86.41442402752293 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006479088561559633 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 2.1433882502201835 | CSP + LDA |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 83.96839963302753 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2592725837798165 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 1.4225005266055046 | FBCSP + SVM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 81.77716613761469 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0009060356478532111 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 2.9963101233394496 | MDM |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 74.75147803669724 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7205820762752294 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 12.103473417431193 | ShallowConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 73.77573903669725 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7542787600917431 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 14.662491354128441 | EEGNet-8,2 |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 71.49345055045872 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.596559912321101 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 17.621344155963303 | DeepConvNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 57.02803262385321 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.8152764195963302 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 12.905036509174312 | EEGTCNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 54.69051987155964 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.4469922132752293 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 14.05607252293578 | EEGITNet |
| Brain Computer Interface | PhysionetMotorImagery MOABB | AUC-ROC | 51.76753313761468 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.6592816424495412 | EEGNeX |
| Brain Computer Interface | PhysionetMotorImagery MOABB | training time (s) | 15.441041990825688 | EEGNeX |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 87.645089 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.44054961000000004 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 18.66545185714286 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 87.600446 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.242558344 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 27.519666214285714 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 87.56138435714286 | DeepConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14939979285714286 | DeepConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 16.94769892857143 | DeepConvNet |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 86.19419642857142 | TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0012505346957142856 | TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 2.250145164285714 | TS + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 85.97656321428572 | TS + EL |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0011540398678571429 | TS + EL |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 2.0496247785714288 | TS + EL |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 85.85937435714285 | TS + LR |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00019676502564285715 | TS + LR |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 0.7383969874999999 | TS + LR |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 84.76562464285713 | FgMDM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00011930851807142857 | FgMDM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 0.2638224375 | FgMDM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 83.93415214285714 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14752584 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 16.83683 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 81.21093692857143 | CSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.005598228914285714 | CSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 8.607374964285714 | CSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 80.98214378571429 | CSP + LDA |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00014398938164285712 | CSP + LDA |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 0.32359593000000003 | CSP + LDA |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 80.44642807142857 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00027854637564285716 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 1.0558947701428572 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 80.39062507142857 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.27677554071428573 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 1.506631742857143 | FBCSP + SVM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 77.48325942857143 | MDM |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0001488995962142857 | MDM |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 0.5031258411428572 | MDM |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 73.92299242857143 | EEGTCNet |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.21598919785714285 | EEGTCNet |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 24.45626664285714 | EEGTCNet |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 70.89843778571428 | EEGITNet |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14692778499999998 | EEGITNet |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 16.739025642857143 | EEGITNet |
| Brain Computer Interface | BNCI2014-002 MOABB | AUC-ROC | 69.94977778571429 | EEGNeX |
| Brain Computer Interface | BNCI2014-002 MOABB | CO2 Emission (g) | 0.357494305 | EEGNeX |
| Brain Computer Interface | BNCI2014-002 MOABB | training time (s) | 40.932428357142854 | EEGNeX |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 62.55243744444444 | TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0030399768388888887 | TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 3.981446488888889 | TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 62.00432277777777 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.9881697544444444 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 38.20503083333333 | ACM + TS + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 61.008716111111106 | TS + LR |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014654134566666668 | TS + LR |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 2.3641572122222225 | TS + LR |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 58.70323127777778 | TS + EL |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.003150417694444444 | TS + EL |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 4.107975877777778 | TS + EL |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 58.31313783333333 | FgMDM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.00262010596 | FgMDM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 4.208450687777778 | FgMDM |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 57.22930833333333 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.17052666777777778 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 19.448256999999998 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 57.07518416666667 | DeepConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1387313113888889 | DeepConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 15.772786944444444 | DeepConvNet |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 54.19855455555555 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.11595792811111111 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 13.1632145 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 54.02069177777777 | CSP + LDA |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014029495131111112 | CSP + LDA |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 2.2638508043333334 | CSP + LDA |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 53.02189611111111 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0022248175055555553 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 3.5652031144444445 | DLCSPauto + shLDA |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 53.01977022222223 | EEGNeX |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.2742768266666667 | EEGNeX |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 31.471043611111114 | EEGNeX |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 52.50602344444445 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.16502183722222222 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 0.8984944177777778 | FBCSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 52.0801445 | CSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0062806895666666675 | CSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 7.718107805555555 | CSP + SVM |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 51.408021500000004 | EEGITNet |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.14264759755555556 | EEGITNet |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 16.165079277777778 | EEGITNet |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 51.220592611111115 | EEGTCNet |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1444858745 | EEGTCNet |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 16.36140288888889 | EEGTCNet |
| Brain Computer Interface | BNCI2015-004 MOABB | AUC-ROC | 48.451672277777774 | MDM |
| Brain Computer Interface | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0008106952038888889 | MDM |
| Brain Computer Interface | BNCI2015-004 MOABB | training time (s) | 1.3395202661111112 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 83.75 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000240011290125 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.390257074875 | TS + LR |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 83.59375 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1485686325 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 5.5518258375 | ACM + TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 82.65625 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000746707585 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 3.0611184312499997 | TS + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 81.40625 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00053827818375 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.177448355 | TS + EL |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 80.78125 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.213897607 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 1.1647642375 | FBCSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 79.84375 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00010770661525000001 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 0.419455321625 | FgMDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 78.59375 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0020791944125 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 4.649679825 | CSP + SVM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 77.1875 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00078139250425 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 2.24472090125 | CSP + LDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 77.03125 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000210748843625 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 0.96225866875 | DLCSPauto + shLDA |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 74.21875 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00035755518724999997 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 2.244058851625 | MDM |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.21616533875 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 22.844518 | EEGNet-8,2 |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.274686495 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 29.150003124999998 | ShallowConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 61.875 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1890227225 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 20.30683625 | DeepConvNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 61.09375 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32988478875 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 34.859817375 | EEGTCNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 52.34375 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32373731 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 34.4930355 | EEGNeX |
| Brain Computer Interface | AlexandreMotorImagery MOABB | AUC-ROC | 47.5 | EEGITNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.23635414124999998 | EEGITNet |
| Brain Computer Interface | AlexandreMotorImagery MOABB | training time (s) | 25.280098125 | EEGITNet |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 84.68838325 | EEGNeX |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 35.690736875 | EEGNeX |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 84.29081139285714 | XDAWNCov + TS + SVM |
| Brain Computer Interface | EPFLP300 MOABB | CO2 Emission (g) | 0.03015609335714286 | XDAWNCov + TS + SVM |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 3.1239111678571425 | XDAWNCov + TS + SVM |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 84.0994343125 | EEGITNet |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 28.6127446875 | EEGITNet |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 83.19801607142858 | XDAWNCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | CO2 Emission (g) | 0.006680508521428571 | XDAWNCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 0.7105525185714285 | XDAWNCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 80.3845744375 | EEGNet-8,2 |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 15.535605484375 | EEGNet-8,2 |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 75.556908 | ShallowConvNet |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 15.697078703125 | ShallowConvNet |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 71.973831125 | ERPCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | CO2 Emission (g) | 0.03419226534375 | ERPCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 6.942208496875 | ERPCov + MDM |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 71.444304125 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | EPFLP300 MOABB | CO2 Emission (g) | 0.011323257109375 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 1.2007145884375 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | EPFLP300 MOABB | AUC-ROC | 62.982488281250006 | XDAWN + LDA |
| Brain Computer Interface | EPFLP300 MOABB | CO2 Emission (g) | 0.018060430625 | XDAWN + LDA |
| Brain Computer Interface | EPFLP300 MOABB | training time (s) | 3.6105500875 | XDAWN + LDA |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 88.82306907692308 | EEGITNet |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 254.26117153846155 | EEGITNet |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 87.28411109999999 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Sosulski2019 MOABB | CO2 Emission (g) | 0.027893668675 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 4.33317254 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 87.13865323076924 | EEGNet-8,2 |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 169.22427923076924 | EEGNet-8,2 |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 86.17639538461539 | EEGNeX |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 292.10557615384613 | EEGNeX |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 86.07416710000001 | XDAWNCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | CO2 Emission (g) | 0.013847520075 | XDAWNCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 2.812111245 | XDAWNCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 78.35273161538461 | ShallowConvNet |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 215.27583423076925 | ShallowConvNet |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 70.632222375 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | CO2 Emission (g) | 0.015362666562499998 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 1.6276701575 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 68.16548655 | ERPCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | CO2 Emission (g) | 0.062550748675 | ERPCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 12.6986916875 | ERPCov + MDM |
| Brain Computer Interface | Sosulski2019 MOABB | AUC-ROC | 67.48655605 | XDAWN + LDA |
| Brain Computer Interface | Sosulski2019 MOABB | CO2 Emission (g) | 0.0360850438 | XDAWN + LDA |
| Brain Computer Interface | Sosulski2019 MOABB | training time (s) | 7.327161445 | XDAWN + LDA |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 83.0813024 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0042846727000000005 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 0.872752316 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 82.9463175 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2015-003 MOABB | CO2 Emission (g) | 0.02330993935 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 4.73371116 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 81.8696517 | EEGITNet |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 31.673819200000004 | EEGITNet |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 81.1056664 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 21.2605219 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 78.6240163 | XDAWN + LDA |
| Brain Computer Interface | BNCI2015-003 MOABB | CO2 Emission (g) | 0.00903317618 | XDAWN + LDA |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 1.74386197 | XDAWN + LDA |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 77.73544530000001 | EEGNeX |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 27.2078305 | EEGNeX |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 76.9320484 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0047693783 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 0.5074777229999999 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 76.7858569 | ERPCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | CO2 Emission (g) | 0.007065287250000001 | ERPCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 1.437615323 | ERPCov + MDM |
| Brain Computer Interface | BNCI2015-003 MOABB | AUC-ROC | 64.19801570000001 | ShallowConvNet |
| Brain Computer Interface | BNCI2015-003 MOABB | training time (s) | 24.1188684 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 85.99520425 | EEGITNet |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 48.9808785 | EEGITNet |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 85.91137825 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 31.55059125 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 85.609029625 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-008 MOABB | CO2 Emission (g) | 0.035406213775 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 8.160695075 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 83.856046375 | EEGNeX |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 47.301771625 | EEGNeX |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 82.244593125 | XDAWN + LDA |
| Brain Computer Interface | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0257013525 | XDAWN + LDA |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 5.2152112625000004 | XDAWN + LDA |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 81.07391687500001 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 27.2347555 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 77.619541 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0075848861750000005 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 1.5414688625 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 75.424771125 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | CO2 Emission (g) | 0.009542170825 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 1.014923625 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | AUC-ROC | 74.298471 | ERPCov + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0120071045 | ERPCov + MDM |
| Brain Computer Interface | BNCI2014-008 MOABB | training time (s) | 2.4383516875 | ERPCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 90.677777575 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Cattan2019-VR MOABB | CO2 Emission (g) | 0.008065587075 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 0.85638401025 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 89.4212960952381 | EEGITNet |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 22.83087557142857 | EEGITNet |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 89.3339950952381 | EEGNeX |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 23.31658614285714 | EEGNeX |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 88.529687375 | XDAWNCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0017226343375000002 | XDAWNCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 0.18693414675 | XDAWNCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 86.3244051904762 | EEGNet-8,2 |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 15.87339438095238 | EEGNet-8,2 |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 80.757379 | ERPCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0067425482250000005 | ERPCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 0.7168895120000001 | ERPCov + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 80.674825575 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0027964518625 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 0.30020958225 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 80.03306880952381 | ShallowConvNet |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 13.902749985714287 | ShallowConvNet |
| Brain Computer Interface | Cattan2019-VR MOABB | AUC-ROC | 67.159201475 | XDAWN + LDA |
| Brain Computer Interface | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0033990314475 | XDAWN + LDA |
| Brain Computer Interface | Cattan2019-VR MOABB | training time (s) | 0.3639022155 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 93.05381111627908 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.010436311162015504 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 2.1127921527131783 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 92.56596253488371 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0024371379224806203 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 0.4988526374418605 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 90.70906591472868 | EEGITNet |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 19.85593708914729 | EEGITNet |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 87.61770750387598 | EEGNeX |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 199.32986724031008 | EEGNeX |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 86.79717793023256 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 14.414908054263565 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 80.01716807751939 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.019448981011627904 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 3.9502074596899224 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 77.92098565891473 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0052664793930232556 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 0.560524827751938 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 76.01550499224807 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0039047394186046513 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 0.7962977278294574 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015a MOABB | AUC-ROC | 59.55947582945736 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2015a MOABB | training time (s) | 15.322640255813955 | ShallowConvNet |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 98.46594386111111 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2018 MOABB | CO2 Emission (g) | 0.07899148369444445 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 9.940868125 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 98.17509305555555 | EEGNet-8,2 |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 78.75188250000001 | EEGNet-8,2 |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 97.78393108333331 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | CO2 Emission (g) | 0.02470122563888889 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 5.015010133333333 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 97.53628586111111 | XDAWN + LDA |
| Brain Computer Interface | Huebner2018 MOABB | CO2 Emission (g) | 0.16110926027777778 | XDAWN + LDA |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 32.70688272222222 | XDAWN + LDA |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 96.608676 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2018 MOABB | CO2 Emission (g) | 0.03743309013888889 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 3.9697683444444447 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 95.14819502777779 | ERPCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | CO2 Emission (g) | 0.1544211313888889 | ERPCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 31.349976444444444 | ERPCov + MDM |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 89.71045811111111 | ShallowConvNet |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 1587.3318289166666 | ShallowConvNet |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 87.6017086111111 | EEGITNet |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 2489.9952416666665 | EEGITNet |
| Brain Computer Interface | Huebner2018 MOABB | AUC-ROC | 76.54384258333333 | EEGNeX |
| Brain Computer Interface | Huebner2018 MOABB | training time (s) | 4893.720471111111 | EEGNeX |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 90.98646704 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007038169084 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 1.4309155479999998 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 89.64630072 | EEGITNet |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 19.83932564 | EEGITNet |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 88.21925356 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.001676014172 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 0.3440682904 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 88.21605579999999 | EEGNeX |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 43.42852808000001 | EEGNeX |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 87.1327338 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 16.79750712 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 79.01510372 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.003451275416 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 0.3691924696 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 78.76657744 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007749152372 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 1.5751372879999999 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 77.06215808 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 12.831535652 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2012 MOABB | AUC-ROC | 64.411995 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.002132688384 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2012 MOABB | training time (s) | 0.4368925492 | XDAWN + LDA |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 98.40814827777777 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Lee2019-ERP MOABB | CO2 Emission (g) | 0.17517531703703704 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 18.539845689814815 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 97.85841548148149 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 109.5753095 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 97.70259957407407 | XDAWNCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | CO2 Emission (g) | 0.04369601411111111 | XDAWNCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 8.865101517592594 | XDAWNCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 96.81215804629629 | EEGITNet |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 468.54065999999995 | EEGITNet |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 96.45206821296297 | XDAWN + LDA |
| Brain Computer Interface | Lee2019-ERP MOABB | CO2 Emission (g) | 0.13853210805555555 | XDAWN + LDA |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 28.108453657407406 | XDAWN + LDA |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 82.47109035185186 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | CO2 Emission (g) | 0.09060789349074073 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 9.584082125 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 77.4085946574074 | ShallowConvNet |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 4598.484442222222 | ShallowConvNet |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 74.43493880555556 | ERPCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | CO2 Emission (g) | 0.6299353016666667 | ERPCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 127.87080321296297 | ERPCov + MDM |
| Brain Computer Interface | Lee2019-ERP MOABB | AUC-ROC | 70.27269508333333 | EEGNeX |
| Brain Computer Interface | Lee2019-ERP MOABB | training time (s) | 6374.80394962963 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 86.65828684375 | EEGITNet |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 22.878644265625 | EEGITNet |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 85.766639203125 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0118778180875 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 2.4124490578125 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 85.082494609375 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 40.16552703125 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 82.089285546875 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 17.4438248203125 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 80.87908620312501 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.002724634465625 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 0.55664274078125 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 72.112766 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0055548682296875 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 0.593198109375 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 71.61664846875 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0108043912796875 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 2.19471158046875 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 66.600249390625 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.00539390185625 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 1.09766276640625 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014a MOABB | AUC-ROC | 63.189278171874996 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2014a MOABB | training time (s) | 11.1103096703125 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 93.42633376666666 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0059379570460000005 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 1.2433190566666668 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 92.20581209999999 | EEGITNet |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 14.687204666666666 | EEGITNet |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 92.0386331 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00151833076 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 0.31271911366666666 | XDAWNCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 91.3685305 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 11.758606149999999 | EEGNet-8,2 |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 90.57953203333334 | EEGNeX |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 14.724422183333333 | EEGNeX |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 85.12375750000001 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 10.642818243333332 | ShallowConvNet |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 84.51730606666668 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0025560880933333334 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 0.27403514700000003 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 81.155062 | ERPCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00581838295 | ERPCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 1.1838480853333333 | ERPCov + MDM |
| Brain Computer Interface | BNCI2014-009 MOABB | AUC-ROC | 64.0324565 | XDAWN + LDA |
| Brain Computer Interface | BNCI2014-009 MOABB | CO2 Emission (g) | 0.001991239006666667 | XDAWN + LDA |
| Brain Computer Interface | BNCI2014-009 MOABB | training time (s) | 0.4082341586666667 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 84.55596702272726 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.043256562954545455 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 8.7821148 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 83.47637268181818 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.009540853547727273 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 1.9377388022727273 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 83.33420745454546 | EEGITNet |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 51.57266440909091 | EEGITNet |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 82.65727052272726 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 36.372572295454546 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 81.59775325 | EEGNeX |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 105.33800122727274 | EEGNeX |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 77.22383009090909 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.03399095902272727 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 6.902407668181818 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 77.09262879545456 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.022060082954545455 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 2.337742318181818 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 75.03742063636363 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.08719968354545454 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 17.70060197727273 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2015b MOABB | AUC-ROC | 73.19578579545454 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2015b MOABB | training time (s) | 50.65970795454545 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 92.71220376712328 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005985859813698631 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 1.2172368082191782 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 90.96501701369863 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.001490637705479452 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 0.30659427246575344 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 90.01125384931507 | EEGITNet |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 16.593567684931507 | EEGITNet |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 88.61672143835617 | EEGNeX |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 25.649349828767125 | EEGNeX |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 85.40249767123287 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 13.898916060273972 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 82.06941052054795 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.002071112097260274 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 0.22355115438356163 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 80.58733515068494 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005112474912328768 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 1.0407688483561643 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 76.74075019178083 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.0024966474219178083 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 0.5100849124657535 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2013a MOABB | AUC-ROC | 74.50491942465753 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2013a MOABB | training time (s) | 9.185006005479453 | ShallowConvNet |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 98.68678031578948 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2017 MOABB | CO2 Emission (g) | 0.06488028365789474 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 10.07638602631579 | XDAWNCov + TS + SVM |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 98.28146008108108 | EEGNet-8,2 |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 73.38250045945946 | EEGNet-8,2 |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 98.07393668421052 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | CO2 Emission (g) | 0.02386866539473684 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 4.846665142105263 | XDAWNCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 97.74267144736841 | XDAWN + LDA |
| Brain Computer Interface | Huebner2017 MOABB | CO2 Emission (g) | 0.12781473060526316 | XDAWN + LDA |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 25.946418210526314 | XDAWN + LDA |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 96.20552692105264 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2017 MOABB | CO2 Emission (g) | 0.03857930394736842 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 4.081931507894737 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 95.78304654054055 | EEGITNet |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 675.4294938108109 | EEGITNet |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 94.469262 | ERPCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | CO2 Emission (g) | 0.13750907568421053 | ERPCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 27.91168176315789 | ERPCov + MDM |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 90.959699 | ShallowConvNet |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 1543.135988162162 | ShallowConvNet |
| Brain Computer Interface | Huebner2017 MOABB | AUC-ROC | 79.73031656756756 | EEGNeX |
| Brain Computer Interface | Huebner2017 MOABB | training time (s) | 4185.744198918919 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 91.88114464864864 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.004579043135135135 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 0.932672401891892 | XDAWNCov + TS + SVM |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 91.58241135135135 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0011774970894594596 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 0.2431399435135135 | XDAWNCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 86.26866734210526 | EEGITNet |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 15.856247092105264 | EEGITNet |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 83.87045207894737 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 18.323774763157896 | EEGNeX |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 83.72681281081081 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0021593195945945947 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 0.44246931054054056 | XDAWN + LDA |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 80.14453618421052 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 11.691945342105264 | EEGNet-8,2 |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 78.56550172972973 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.008591208308108108 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 1.7454204 | ERPCov + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 76.47954105405405 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.002490634086486486 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 0.2674589289189189 | ERPCov(svd_n=4) + MDM |
| Brain Computer Interface | BrainInvaders2014b MOABB | AUC-ROC | 63.752483210526314 | ShallowConvNet |
| Brain Computer Interface | BrainInvaders2014b MOABB | training time (s) | 8.105964836842105 | ShallowConvNet |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 99.19753077777779 | TRCA |
| Brain Computer Interface | Nakanishi2015 MOABB | CO2 Emission (g) | 0.04248703377777777 | TRCA |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 5.9494875333333335 | TRCA |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 92.53086377777778 | CCA |
| Brain Computer Interface | Nakanishi2015 MOABB | CO2 Emission (g) | 0.007113911222222223 | CCA |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 0.9963089366666666 | CCA |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 87.22222211111111 | SSVEP_TS + LR |
| Brain Computer Interface | Nakanishi2015 MOABB | CO2 Emission (g) | 0.08959895766666666 | SSVEP_TS + LR |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 4.598894566666667 | SSVEP_TS + LR |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 86.29629577777777 | SSVEP_TS + SVM |
| Brain Computer Interface | Nakanishi2015 MOABB | CO2 Emission (g) | 0.07978009122222222 | SSVEP_TS + SVM |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 4.098129833333334 | SSVEP_TS + SVM |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 82.65431844444444 | EEGNeX |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 35.36092722222222 | EEGNeX |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 80.86419722222222 | EEGITNet |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 8.040663722222222 | EEGITNet |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 78.76543211111111 | SSVEP_MDM |
| Brain Computer Interface | Nakanishi2015 MOABB | CO2 Emission (g) | 0.10513940711111111 | SSVEP_MDM |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 5.3561836 | SSVEP_MDM |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 57.469136 | ShallowConvNet |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 6.811167988888889 | ShallowConvNet |
| Brain Computer Interface | Nakanishi2015 MOABB | Accuracy | 44.135803 | EEGNet-8,2 |
| Brain Computer Interface | Nakanishi2015 MOABB | training time (s) | 4.711782822222222 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 42.1 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM3 MOABB | CO2 Emission (g) | 0.026997567 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 1.46499837 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 40.199999999999996 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM3 MOABB | CO2 Emission (g) | 0.0252171588 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 1.36490621 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 34.4 | SSVEP_MDM |
| Brain Computer Interface | MAMEM3 MOABB | CO2 Emission (g) | 0.028922213000000002 | SSVEP_MDM |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 1.56297961 | SSVEP_MDM |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 33.1 | ShallowConvNet |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 5.90452088 | ShallowConvNet |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 27.500000000000004 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 5.74253287 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 27.1 | TRCA |
| Brain Computer Interface | MAMEM3 MOABB | CO2 Emission (g) | 0.0317322511 | TRCA |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 4.44355459 | TRCA |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 25 | EEGITNet |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 6.796000050000001 | EEGITNet |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 24.8 | EEGNeX |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 22.5295867 | EEGNeX |
| Brain Computer Interface | MAMEM3 MOABB | Accuracy | 22.800000000000004 | CCA |
| Brain Computer Interface | MAMEM3 MOABB | CO2 Emission (g) | 0.00131271061 | CCA |
| Brain Computer Interface | MAMEM3 MOABB | training time (s) | 0.183953595 | CCA |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 39.36 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM2 MOABB | CO2 Emission (g) | 17.0932925 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 840.129991 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 34.8 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM2 MOABB | CO2 Emission (g) | 16.319102700000002 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 791.885326 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 26.32 | EEGNeX |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 180.9718512 | EEGNeX |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 25.840000000000003 | ShallowConvNet |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 1620.974344 | ShallowConvNet |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 24.56 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 26.034414199999997 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 23.12 | SSVEP_MDM |
| Brain Computer Interface | MAMEM2 MOABB | CO2 Emission (g) | 21.4845976 | SSVEP_MDM |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 1028.1009 | SSVEP_MDM |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 22.72 | EEGITNet |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 34.195504299999996 | EEGITNet |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 22.64 | TRCA |
| Brain Computer Interface | MAMEM2 MOABB | CO2 Emission (g) | 2.85556727 | TRCA |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 399.849453 | TRCA |
| Brain Computer Interface | MAMEM2 MOABB | Accuracy | 20.64 | CCA |
| Brain Computer Interface | MAMEM2 MOABB | CO2 Emission (g) | 0.10534236079999999 | CCA |
| Brain Computer Interface | MAMEM2 MOABB | training time (s) | 14.7508205 | CCA |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 67.1084639 | EEGNeX |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 197.02376239999998 | EEGNeX |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 58.0691632 | EEGITNet |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 39.6391611 | EEGITNet |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 54.5442871 | TRCA |
| Brain Computer Interface | MAMEM1 MOABB | CO2 Emission (g) | 1.785962026 | TRCA |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 250.07919099999998 | TRCA |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 53.70517730000001 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM1 MOABB | CO2 Emission (g) | 13.59719356 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 698.7826769999999 | SSVEP_TS + LR |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 50.57987980000001 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM1 MOABB | CO2 Emission (g) | 12.962970100000001 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 657.646162 | SSVEP_TS + SVM |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 43.029499 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 23.1336158 | EEGNet-8,2 |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 36.03516260000001 | ShallowConvNet |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 3920.421198 | ShallowConvNet |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 27.3128415 | SSVEP_MDM |
| Brain Computer Interface | MAMEM1 MOABB | CO2 Emission (g) | 16.1321347 | SSVEP_MDM |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 824.9421399999999 | SSVEP_MDM |
| Brain Computer Interface | MAMEM1 MOABB | Accuracy | 21.7420669 | CCA |
| Brain Computer Interface | MAMEM1 MOABB | CO2 Emission (g) | 0.0819434059 | CCA |
| Brain Computer Interface | MAMEM1 MOABB | training time (s) | 11.47441585 | CCA |
| Brain Computer Interface | Wang2016 MOABB | Accuracy | 98.97058994117646 | TRCA |
| Brain Computer Interface | Wang2016 MOABB | CO2 Emission (g) | 0.35510938491176475 | TRCA |
| Brain Computer Interface | Wang2016 MOABB | training time (s) | 51.168803294117644 | TRCA |
| Brain Computer Interface | Wang2016 MOABB | Accuracy | 88.22303944117647 | CCA |
| Brain Computer Interface | Wang2016 MOABB | CO2 Emission (g) | 0.25679755529411763 | CCA |
| Brain Computer Interface | Wang2016 MOABB | training time (s) | 35.958232058823526 | CCA |
| Brain Computer Interface | Wang2016 MOABB | Accuracy | 67.52450958823529 | SSVEP_TS + LR |
| Brain Computer Interface | Wang2016 MOABB | CO2 Emission (g) | 0.014626497973529412 | SSVEP_TS + LR |
| Brain Computer Interface | Wang2016 MOABB | training time (s) | 23.87455808235294 | SSVEP_TS + LR |
| Brain Computer Interface | Wang2016 MOABB | Accuracy | 59.58333323529412 | SSVEP_TS + SVM |
| Brain Computer Interface | Wang2016 MOABB | CO2 Emission (g) | 0.016185734488235293 | SSVEP_TS + SVM |
| Brain Computer Interface | Wang2016 MOABB | training time (s) | 27.371970164705882 | SSVEP_TS + SVM |
| Brain Computer Interface | Wang2016 MOABB | Accuracy | 54.76715661764706 | SSVEP_MDM |
| Brain Computer Interface | Wang2016 MOABB | CO2 Emission (g) | 0.014037612047058824 | SSVEP_MDM |
| Brain Computer Interface | Wang2016 MOABB | training time (s) | 19.76784232352941 | SSVEP_MDM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 97.77777777777777 | TRCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.25070370964814814 | TRCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 35.42286275 | TRCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 93.80555555555556 | EEGNeX |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 191.3021131111111 | EEGNeX |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 90.97222222222221 | CCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.010103892560185186 | CCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 1.415124501851852 | CCA |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 89.44444444444444 | SSVEP_TS + LR |
| Brain Computer Interface | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11153871532407408 | SSVEP_TS + LR |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 15.61881037037037 | SSVEP_TS + LR |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 88.58333333333334 | SSVEP_TS + SVM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.10468667306481481 | SSVEP_TS + SVM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 14.65914484722222 | SSVEP_TS + SVM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 86.8425925925926 | EEGITNet |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 23.24565614351852 | EEGITNet |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 74.81818181818181 | SSVEP_MDM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11398800675324675 | SSVEP_MDM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 15.961555350649352 | SSVEP_MDM |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 69.3611111111111 | ShallowConvNet |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 33.26947674074074 | ShallowConvNet |
| Brain Computer Interface | Lee2019-SSVEP MOABB | Accuracy | 64.42592592592592 | EEGNet-8,2 |
| Brain Computer Interface | Lee2019-SSVEP MOABB | training time (s) | 13.879997119444445 | EEGNet-8,2 |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 70.89385925 | SSVEP_MDM |
| Brain Computer Interface | Kalunga2016 MOABB | CO2 Emission (g) | 0.002602688875 | SSVEP_MDM |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 0.16333881583333335 | SSVEP_MDM |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 70.86472991666666 | SSVEP_TS + LR |
| Brain Computer Interface | Kalunga2016 MOABB | CO2 Emission (g) | 0.0021011706583333335 | SSVEP_TS + LR |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 0.13897842158333332 | SSVEP_TS + LR |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 68.94949916666667 | SSVEP_TS + SVM |
| Brain Computer Interface | Kalunga2016 MOABB | CO2 Emission (g) | 0.0022165178750000003 | SSVEP_TS + SVM |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 0.130249698 | SSVEP_TS + SVM |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 54.420178166666666 | ShallowConvNet |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 6.559657266666666 | ShallowConvNet |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 43.5187945 | EEGNet-8,2 |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 7.561273683333333 | EEGNet-8,2 |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 34.20391266666667 | TRCA |
| Brain Computer Interface | Kalunga2016 MOABB | CO2 Emission (g) | 0.0019902593416666666 | TRCA |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 0.27882464583333333 | TRCA |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 33.87684483333333 | CCA |
| Brain Computer Interface | Kalunga2016 MOABB | CO2 Emission (g) | 0.0005601459183333333 | CCA |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 0.07858161266666668 | CCA |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 31.35680125 | EEGNeX |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 10.771992875 | EEGNeX |
| Brain Computer Interface | Kalunga2016 MOABB | Accuracy | 24.79779866666667 | EEGITNet |
| Brain Computer Interface | Kalunga2016 MOABB | training time (s) | 6.9656671333333335 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 59.934408990825695 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.013059559739449542 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 25.291020102752295 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 58.55441266055046 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0010041190067889907 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.2208920137614676 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 58.458600238532114 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0243752586293578 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 48.31867250642202 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 56.68057317948718 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.330426302205128 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 92.28611607692308 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 55.0438009174312 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002020601044036697 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.204224353211009 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 48.51775490825688 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.9742764488073394 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1190.5449858715597 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 47.73427576146789 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0054728938412844045 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 8.780583234862386 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 46.84880671559633 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.005456309299082569 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 8.482141944036696 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 45.493503000000004 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.06618156533027524 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 68.7581273853211 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 42.96454042201835 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.003281270780733945 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.167569839633027 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 41.87124210091743 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.038677560009174314 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 15.891879321100918 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 29.03593889908257 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.024848891426605502 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 10.598362683486238 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 27.682707357798165 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.034966375495412844 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.11812210091743 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 26.68615756880734 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.059308609688073395 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 22.783741321100916 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 26.154798385321104 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4149273854862385 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.559821752293578 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 25.790262357798166 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.7750069540733944 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 18.127433243119267 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 64.3835718 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 6.1498658200000005 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 335.21023 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 63.840714199999994 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0319534623 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 34.0226515 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 62.762142 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00205973584 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 2.12094548 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 61.469286499999995 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.014714955200000001 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 15.092744999999999 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 56.9400009 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00332279971 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 3.4260148399999997 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 48.9364276 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 22.743277258 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 100.2113981 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 45.212857299999996 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.030076381000000003 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 37.9020129 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 44.0792858 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.5357583659999999 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 677.4126650000001 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 39.4492859 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0037056161800000003 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 4.84518394 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 38.8442857 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00369364373 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 4.82886682 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 35.3514286 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 10.5262206565 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 34.2388724 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 33.4078569 | MDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00188059405 | MDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 2.01196917 | MDM |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 30.215714 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 35.190156514 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 126.255782 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 25.7807146 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 13.394392257000002 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 43.4866037 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 24.1678569 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 30.440530905000003 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 73.0829022 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | Accuracy | 17.9464288 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 15.281205185 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 47.42458 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.79166675 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0013501269012499999 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.749322665 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.5833345 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.18950154875 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 7.6877846125 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.16666637499999 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000786763229625 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.85145594625 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 67.916665875 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00173950673625 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 3.3987408749999997 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 65.62500112500001 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00038144418074999997 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.743955544625 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 65 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.005079346375 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 19.6318726375 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 62.91666625 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.03446902725 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 44.612727875000004 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 61.041666500000005 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0005938407575 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.0782176175 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 60.62500012500001 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0003630056075 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.6206318012500001 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 60.62499999999999 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000925614838125 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.6782885705 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 50.00000075 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.21283768775 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 12.9602863125 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 43.958333875 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.673163054 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.24752825 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 37.708333625 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.1961726155 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.8963939375 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 37.7083335 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.546965218875 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 8.58771105 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 36.041667 | EEGITNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.109086602625 | EEGITNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.4757763125 | EEGITNet |
| Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 34.166666875 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.198906455875 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.205565762500001 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 77.88163016666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 1.7743017888888888 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 73.50212961111112 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 72.47227177777778 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.394738715 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 45.877247277777776 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 72.38119294444444 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006551190227777778 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.852831627777778 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 71.97351649999999 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004666705854444444 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 19.167550810555554 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 70.75586455555556 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01799459135 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 66.23056458333332 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 70.14149394444445 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.014329298037222223 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 59.714323183333335 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.88411633333334 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1285738541111111 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 147.7146591111111 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.52618122222222 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004104928794444445 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 5.445951 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.3070505 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0028627887866666665 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 9.741079583888888 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 65.994152 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010921193731666667 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 52.462251144444444 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 61.600793277777775 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.012491149514444445 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 75.09591532444445 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 60.46380244444445 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1871718811111111 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 21.723354222222223 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 45.61672333333334 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.5342137127777778 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 62.59321944444444 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 41.64616544444444 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.28639946055555554 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.0790875 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 35.54681733333334 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1578935777777778 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.299775611111112 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | Accuracy | 35.29273355555556 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.15884736222222223 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.38852738888889 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 85.85246441666668 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1941063975 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 7.277364225 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 85.02304108333334 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.21728041750000002 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 24.664789916666667 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 84.87930308333334 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.004125581083333333 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 14.9374373825 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 84.53929741666667 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.025638485455833332 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 75.6071288 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 83.65528725 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.013120034294166666 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 39.13084056666667 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 83.33782725 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16457950333333335 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 18.622367166666667 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 83.08474258333334 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.04421750124999999 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 129.06390283333334 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 83.07198441666667 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.010749338934166667 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 71.767263065 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 82.9630775 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.008406058218333333 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 46.6342523525 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 82.06140125 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0014094379383333333 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 8.307476150833333 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 81.98970291666666 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00143389045 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 1.8146779000000002 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 76.04754891666667 | MDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0013000749791666668 | MDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 8.044291825 | MDM |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 56.41506 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.29802479833333334 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 34.04211566666667 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 55.691373 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11693505166666666 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 13.242306708333333 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 50.67784558333334 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16801267050000002 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 19.01079075 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | Accuracy | 37.193690833333335 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12480563316666667 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 14.080227958333333 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.52905985714287 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.16102813214285713 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 86.77469099999999 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.39824135714285 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 20.32321697142857 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 707.9741635714284 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.13492092857142 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.612351642857143 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 1877.5478428571428 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 84.59829828571428 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0075348416357142855 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 4.9577661214285715 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 84.41288664285715 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04492253178571428 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 23.104729499999998 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 82.97360807142857 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.09652152407142857 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 61.4208665 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 76.98508007142857 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.9416739878571428 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 214.51948785714285 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 75.93963142857143 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.1834183317857143 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 181.90692642857144 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 75.88554942857144 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.8806029271428572 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 531.3518721428571 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 72.97147700000001 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004620156871428571 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 3.027175342857143 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 72.8150212857143 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004526741521428572 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 2.9170686285714287 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 71.11233471428572 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.0679361071428572 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 471.15728 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 70.44199514285714 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.478115302857143 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 336.80249142857144 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 67.55850299999999 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 4.719508371428572 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 1075.1257621428572 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 56.77987328571429 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.7812169435714285 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 405.86182285714284 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 52.03144735714286 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.007416166485714286 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 4.819618021428572 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.4798674678899 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4211595544036697 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.023694665137615 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.45973491743119 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0030451742727522933 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.395441841284404 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.17686030275229 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002011187666788991 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.376171044495413 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.9113149174312 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002922431799908257 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.133613628073395 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.28338431192661 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016746719404036696 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.225256745229358 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.2357288440367 | TRCSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002136693423082569 | TRCSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.659003014128441 | TRCSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.74796130275229 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0015942293279908256 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.20135004233945 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.71304793577983 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0033223538248623855 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 7.022697680733945 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.1939347614679 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.6320094714220184 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.345875044954127 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.07415901834862 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0012151826062018348 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.403307553027523 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 62.34913353211009 | LogVar + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016599262179357798 | LogVar + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.982814494036697 | LogVar + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 61.938583036697246 | LogVar + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0024540891949541284 | LogVar + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 5.312168379816514 | LogVar + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 59.57492357798165 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.1069343064220183 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 9.95131664587156 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 59.552752311926604 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.5409163972477065 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.154883428440368 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 58.44724773394495 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2997174272477064 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.6316544247706422 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 55.90341492660551 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8180092174311926 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.434462706422018 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 54.75993883486239 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0019827723381192664 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.593253893211009 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 52.70922529357799 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.407468192660551 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 11.497989633027524 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 51.19622834862385 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8861695403669723 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.67985970183486 | EEGNeX |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 82.0049287111111 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.02593451466666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.439084654222222 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.39444377777778 | FBCSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.14387416055555555 | FBCSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 0.783375099111111 | FBCSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.0956668888889 | CSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005452296241333334 | CSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.2460348456222223 | CSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.09376537777779 | TS + LR |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006557710575999999 | TS + LR |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.7434176553111111 | TS + LR |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.87291397777778 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006216743171333333 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.8661370398 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.78218279999999 | TRCSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006737686001777777 | TRCSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.457821241711111 | TRCSP + LDA |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.75479504444445 | TS + EL |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0010797430764444445 | TS + EL |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.079450579777778 | TS + EL |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.41006457777777 | TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.001196510487111111 | TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.356883378 | TS + SVM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.28086771111111 | FgMDM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006603817830888889 | FgMDM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.5159122454666667 | FgMDM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.27025824444443 | CSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.004687019133333334 | CSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 6.61830888 | CSP + SVM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 78.50732679999999 | LogVar + LDA |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005384169830822222 | LogVar + LDA |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.2824246142888889 | LogVar + LDA |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 78.29806786666667 | LogVar + SVM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0008958152281111112 | LogVar + SVM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.0932973742222223 | LogVar + SVM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 77.65547846666666 | MDM |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0003528847734 | MDM |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 0.9042913831777778 | MDM |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 72.35971368888889 | ShallowConvNet |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.05743548577777778 | ShallowConvNet |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 6.921017688888888 | ShallowConvNet |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 72.35753537777777 | DeepConvNet |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.08229932173333333 | DeepConvNet |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 9.503357968888889 | DeepConvNet |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 69.69639757777777 | EEGTCNet |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.12710436082222223 | EEGTCNet |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 15.25518438888889 | EEGTCNet |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 69.498559 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.07430071106666666 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 8.935735724444443 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 66.52779386666666 | EEGNeX |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.10765803022222223 | EEGNeX |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 13.068636999999999 | EEGNeX |
| Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 65.09554904444444 | EEGITNet |
| Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.09232083362222221 | EEGITNet |
| Motor Imagery | BNCI2014-004 MOABB | training time (s) | 11.108478222222223 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 85.2855546 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.01054370724 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 16.70190309 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.835458 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.47882039 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 329.502181 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.7230547 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.01144170013 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 19.7101636 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.6191015 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.007658937971 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 17.19314084 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 80.7190701 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.003059077913 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 5.572459653 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 80.16262729999998 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0042039635710000006 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 8.469146077 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.8404006 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0187107375 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 25.68750405 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.32908119999999 | TRCSP + LDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.001778520405 | TRCSP + LDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 3.318742769 | TRCSP + LDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.0972572 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.357279468 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 61.683436400000005 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 78.41374400000001 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00607642027 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 10.29490904 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 76.81202040000001 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.589712181 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 3.2107585999999997 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 74.852519 | LogVar + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00979238033 | LogVar + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 19.02302114 | LogVar + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 74.1323346 | LogVar + LDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.002844444774 | LogVar + LDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 5.320173393999999 | LogVar + LDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 73.6449296 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.3282129534 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 34.809638 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 66.4564741 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.7898681898000001 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 19.67945195 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 63.16485980000001 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.5258725022999999 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 28.1203618 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 59.3464601 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 1.1843646793 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 20.2672368 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 58.801497999999995 | MDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.004551940515 | MDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 8.631213726 | MDM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 57.965879799999996 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.6715904881 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 42.3490198 | EEGNeX |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 89.2466661 | TS + EL |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.269148976 | TS + EL |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 243.142401 | TS + EL |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 88.0777776 | TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.28341764999999997 | TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 265.222582 | TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.60000099999999 | TS + LR |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0139535835 | TS + LR |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 34.60417205 | TS + LR |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.42888820000002 | ACM + TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 6.55720808 | ACM + TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 325.665074 | ACM + TS + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.0177778 | FgMDM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.15610860310000002 | FgMDM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 85.13785279999999 | FgMDM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 86.52888920000001 | ShallowConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 2.3070343 | ShallowConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 277.2352575 | ShallowConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 83.0155557 | EEGNet-8,2 |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9723642659999999 | EEGNet-8,2 |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 117.19713259999999 | EEGNet-8,2 |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 82.382222 | DeepConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9234428940000001 | DeepConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 110.56912460000001 | DeepConvNet |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 81.7311101 | LogVar + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.00362474352 | LogVar + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 6.762669579999999 | LogVar + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 79.6511118 | FBCSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 21.6308037 | FBCSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 117.8105055 | FBCSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 78.7111117 | LogVar + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000772556251 | LogVar + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 4.040722504 | LogVar + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 78.2866669 | TRCSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.002421635666 | TRCSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 14.640627636 | TRCSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 77.8066665 | CSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0356465945 | CSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 37.7887083 | CSP + SVM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 76.4377781 | CSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000984520588 | CSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 4.92442061 | CSP + LDA |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 76.4022231 | DLCSPauto + shLDA |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.001667790323 | DLCSPauto + shLDA |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 8.404077422 | DLCSPauto + shLDA |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 72.18666590000001 | EEGITNet |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.8872510549999999 | EEGITNet |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 106.55474389999999 | EEGITNet |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 68.4511113 | EEGTCNet |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 1.518727995 | EEGTCNet |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 183.107304 | EEGTCNet |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 64.291111 | MDM |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.01076914422 | MDM |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 14.947136800000001 | MDM |
| Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 56.99555540000001 | EEGNeX |
| Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 3.4729265 | EEGNeX |
| Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 422.45747300000005 | EEGNeX |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 72.29885057471265 | CSP + LDA |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0031280651400344825 | CSP + LDA |
| Motor Imagery | Shin2017A MOABB | training time (s) | 6.032976467126437 | CSP + LDA |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.97701149425288 | ACM + TS + SVM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.44081082241379316 | ACM + TS + SVM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 18.935673712643677 | ACM + TS + SVM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.86206896551724 | FgMDM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.006155834353908047 | FgMDM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 12.416171135632183 | FgMDM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.3448275862069 | DLCSPauto + shLDA |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.002772973099505747 | DLCSPauto + shLDA |
| Motor Imagery | Shin2017A MOABB | training time (s) | 5.865132493643678 | DLCSPauto + shLDA |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.11494252873564 | CSP + SVM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.005158950352873563 | CSP + SVM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 9.313418644827586 | CSP + SVM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 69.3103448275862 | TS + LR |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0020542086796666668 | TS + LR |
| Motor Imagery | Shin2017A MOABB | training time (s) | 4.086728204942529 | TS + LR |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 68.67816091954023 | TS + EL |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00418902949183908 | TS + EL |
| Motor Imagery | Shin2017A MOABB | training time (s) | 7.833182418390805 | TS + EL |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 68.44827586206897 | TS + SVM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00357418835862069 | TS + SVM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 7.287723882183908 | TS + SVM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 67.29885057471265 | TRCSP + LDA |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0028938624342988504 | TRCSP + LDA |
| Motor Imagery | Shin2017A MOABB | training time (s) | 5.785437376344828 | TRCSP + LDA |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 65.63218390804599 | FBCSP + SVM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.05493400862068966 | FBCSP + SVM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 0.29933049333333334 | FBCSP + SVM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 62.98850574712643 | MDM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.002936805686195402 | MDM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 6.130959453310345 | MDM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 61.7816091954023 | LogVar + LDA |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0037351209763448272 | LogVar + LDA |
| Motor Imagery | Shin2017A MOABB | training time (s) | 7.392233189712644 | LogVar + LDA |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 61.37931034482759 | LogVar + SVM |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00378480009954023 | LogVar + SVM |
| Motor Imagery | Shin2017A MOABB | training time (s) | 7.829565021494252 | LogVar + SVM |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 60.80459770114942 | ShallowConvNet |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 13.571865731034483 | ShallowConvNet |
| Motor Imagery | Shin2017A MOABB | training time (s) | 73.86500129885057 | ShallowConvNet |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 57.98850574712644 | EEGNet-8,2 |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 9.758972163218392 | EEGNet-8,2 |
| Motor Imagery | Shin2017A MOABB | training time (s) | 53.113962264367814 | EEGNet-8,2 |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 56.03448275862068 | DeepConvNet |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 5.162565710344827 | DeepConvNet |
| Motor Imagery | Shin2017A MOABB | training time (s) | 28.097837931034483 | DeepConvNet |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 52.18390804597701 | EEGITNet |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 8.672446098850575 | EEGITNet |
| Motor Imagery | Shin2017A MOABB | training time (s) | 47.200400390804596 | EEGITNet |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 51.26436781609196 | EEGTCNet |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 21.768854620689655 | EEGTCNet |
| Motor Imagery | Shin2017A MOABB | training time (s) | 118.47680619540229 | EEGTCNet |
| Motor Imagery | Shin2017A MOABB | AUC-ROC | 49.02298850574712 | EEGNeX |
| Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 16.20613807471264 | EEGNeX |
| Motor Imagery | Shin2017A MOABB | training time (s) | 88.2030973908046 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 88.70422614285715 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.49335965 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 327.9551457142857 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 88.64610935714285 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.044947839499999996 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 27.018976428571428 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 87.64284414285714 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020339250814285715 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 11.905010892857144 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 87.21996714285714 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005596339442857143 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 8.187318035714286 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 86.71347114285714 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.10021865657142857 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 67.09638471428572 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 84.81764307142858 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.48519369357142855 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 268.71988714285715 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 81.44109821428572 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 25.420092035714283 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 138.46111907142856 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 81.2303262857143 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19315654464285714 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 109.64171142857143 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 80.20351621428571 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.13953920821428573 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 87.55805742857142 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.41504057142856 | LogVar + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020349772242857143 | LogVar + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 22.148402514285713 | LogVar + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.23637321428572 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.032244818214285716 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 23.25204464285714 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.1367927142857 | TRCSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.018842971650000002 | TRCSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 16.598896885714286 | TRCSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 78.43861257142856 | LogVar + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014727059297142856 | LogVar + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.265415285714285 | LogVar + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 77.23480071428571 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005735273075 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.583879442857143 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 77.02151357142857 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005144324647142857 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.114322803571428 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 75.61966142857143 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.43859431071428573 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 261.3786007142857 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 74.66472221428572 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19887899714285712 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 113.00491099999999 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 68.58403092857142 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.6476672135714285 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 341.07117250000005 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 61.52606428571429 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00449722365 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 5.6453727 | MDM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 76.2289796153846 | TS + EL |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.008755807778846155 | TS + EL |
| Motor Imagery | Cho2017 MOABB | training time (s) | 13.766507201923076 | TS + EL |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 75.52711013461538 | ACM + TS + SVM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 1.8557469153846153 | ACM + TS + SVM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 62.31514830769231 | ACM + TS + SVM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 75.00852038461538 | TS + LR |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0018744818367307692 | TS + LR |
| Motor Imagery | Cho2017 MOABB | training time (s) | 6.214885324999999 | TS + LR |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 74.61810898076924 | TS + SVM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.008696662651923077 | TS + SVM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 12.687089688461539 | TS + SVM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 73.83557690384616 | ShallowConvNet |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.058521977903846154 | ShallowConvNet |
| Motor Imagery | Cho2017 MOABB | training time (s) | 46.979712846153845 | ShallowConvNet |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 72.89826388461537 | FgMDM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.002231383398076923 | FgMDM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 4.56839715 | FgMDM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.92080661538462 | CSP + SVM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.013585275634615385 | CSP + SVM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 20.833295817307693 | CSP + SVM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.84767628846154 | TRCSP + LDA |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.001189626241 | TRCSP + LDA |
| Motor Imagery | Cho2017 MOABB | training time (s) | 3.8611871384615384 | TRCSP + LDA |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.67248932692308 | DeepConvNet |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.2637025025 | DeepConvNet |
| Motor Imagery | Cho2017 MOABB | training time (s) | 60.08802442307693 | DeepConvNet |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.38116988461539 | CSP + LDA |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0011575846306923075 | CSP + LDA |
| Motor Imagery | Cho2017 MOABB | training time (s) | 3.884574095846154 | CSP + LDA |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.15633009615384 | DLCSPauto + shLDA |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.001064577328173077 | DLCSPauto + shLDA |
| Motor Imagery | Cho2017 MOABB | training time (s) | 3.4957703001923077 | DLCSPauto + shLDA |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 67.90934826923076 | FBCSP + SVM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.003133048219230769 | FBCSP + SVM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 2.7608346807692308 | FBCSP + SVM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 66.78533653846154 | EEGNet-8,2 |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.09790713498076922 | EEGNet-8,2 |
| Motor Imagery | Cho2017 MOABB | training time (s) | 22.314706884615383 | EEGNet-8,2 |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 65.46407580769231 | LogVar + SVM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0015806333348076923 | LogVar + SVM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 4.417776592307693 | LogVar + SVM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 64.49059826923077 | LogVar + LDA |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0009515043146153847 | LogVar + LDA |
| Motor Imagery | Cho2017 MOABB | training time (s) | 2.7242354466346157 | LogVar + LDA |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 63.39276176923077 | MDM |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.00237880536 | MDM |
| Motor Imagery | Cho2017 MOABB | training time (s) | 6.796549341730769 | MDM |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 58.33552344230769 | EEGTCNet |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.1190211419423077 | EEGTCNet |
| Motor Imagery | Cho2017 MOABB | training time (s) | 27.13974953846154 | EEGTCNet |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 57.196153846153855 | EEGITNet |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.11474572860576923 | EEGITNet |
| Motor Imagery | Cho2017 MOABB | training time (s) | 26.596911269230766 | EEGITNet |
| Motor Imagery | Cho2017 MOABB | AUC-ROC | 53.279941384615384 | EEGNeX |
| Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.2174445951923077 | EEGNeX |
| Motor Imagery | Cho2017 MOABB | training time (s) | 49.56457763461538 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.87717316666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8832741538888889 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 37.19322716666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 87.4123206111111 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.023651943657777775 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 91.08604166666666 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.52796605555557 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03423917689166667 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 58.82106999444444 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.47732361111112 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.021483784244444443 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 40.16215047222222 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.44255583333333 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010235186905555556 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 23.73425226666667 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.16591022222222 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23767624 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 28.300448333333332 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 84.4368855 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.30146339333333333 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.6411384872222223 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 83.07369627777778 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03449044713888889 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 60.17366931666667 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.74829922222222 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006283899536444444 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 21.795549848888886 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.33597905555557 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01768477408111111 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 26.033208126666665 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.07331861111112 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.11586982311111112 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.686492722222221 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 81.69425572222222 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.02021859091111111 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 42.17484379888889 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 79.83560116666666 | TRCSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.008658991335722222 | TRCSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.69900212111111 | TRCSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 77.95615972222222 | LogVar + LDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.005686139496333334 | LogVar + LDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.134125769444445 | LogVar + LDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 77.15268383333334 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.12332580900000001 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.563619111111112 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.86092177777778 | LogVar + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.007728553635555556 | LogVar + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 15.609176037777777 | LogVar + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.27399844444444 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1597577938888889 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.952416222222222 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 67.46182961111111 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.18110872972222222 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 20.17755577777778 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 66.28193516666667 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.31804718277777777 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 38.14933605555555 | EEGNeX |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 84.74444444444444 | TS + EL |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.002646718319444444 | TS + EL |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.678475692592593 | TS + EL |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 84.16666666666667 | ACM + TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.8164949121481482 | ACM + TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 29.706403990740743 | ACM + TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 83.57037037037037 | TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0024145104012962965 | TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 5.273111012962963 | TS + SVM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 83.09259259259258 | TS + LR |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0008697607500925927 | TS + LR |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 2.4829364574074075 | TS + LR |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 81.3425925925926 | FgMDM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0021175731353703705 | FgMDM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 5.031711893518518 | FgMDM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 77.27037037037037 | CSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.005258449698148148 | CSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 8.139176210185186 | CSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.88148148148147 | CSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0012470851392592593 | CSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.3465501966666666 | CSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.68703703703704 | DLCSPauto + shLDA |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0014866114661481482 | DLCSPauto + shLDA |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.686696781111111 | DLCSPauto + shLDA |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.2611111111111 | TRCSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.001290584364037037 | TRCSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.8623176347222223 | TRCSP + LDA |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 75.82777777777778 | ShallowConvNet |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0627169262962963 | ShallowConvNet |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 52.18373611111111 | ShallowConvNet |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 75.07222222222222 | FBCSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.4983456616666667 | FBCSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 2.7125740925925927 | FBCSP + SVM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 73.83148148148148 | LogVar + SVM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0023018676362962964 | LogVar + SVM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.534608688425926 | LogVar + SVM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 70.64722222222223 | DeepConvNet |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.08747840010185186 | DeepConvNet |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 19.933118574074072 | DeepConvNet |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 70.22962962962963 | MDM |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.00100529917 | MDM |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.1416363901851856 | MDM |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 66.21296296296296 | LogVar + LDA |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0026458692239444445 | LogVar + LDA |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 6.251461617777778 | LogVar + LDA |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 65.67222222222222 | EEGNet-8,2 |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.06521628261574074 | EEGNet-8,2 |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 14.961433282407407 | EEGNet-8,2 |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 59.166666666666664 | EEGITNet |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.08459861206481481 | EEGITNet |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 19.277117560185186 | EEGITNet |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 55.681481481481484 | EEGTCNet |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.07880292099074075 | EEGTCNet |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 17.962674342592592 | EEGTCNet |
| Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 55.12222222222223 | EEGNeX |
| Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.17330265775 | EEGNeX |
| Motor Imagery | Lee2019-MI MOABB | training time (s) | 39.780105 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.65019116666667 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1549817675 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 18.007408791666666 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.18760766666666 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13623877575 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 4.912889991666667 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.84044641666665 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11864727041666667 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 13.72778775 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.41753624999998 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11453622516666667 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 13.273857999999999 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.35313333333333 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0018601271058333332 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 3.7908793 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.16005008333333 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0007884223154166666 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 2.283726725 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.533263 | TRCSP + LDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0009910642599999999 | TRCSP + LDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 2.9101597717500005 | TRCSP + LDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.37149766666667 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0025104166216666666 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 5.204099866666667 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.14890566666666 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0006859483835833334 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 1.3644024541666664 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.96259333333333 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.006482190183333333 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 10.441263425 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.63712633333334 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12367576549999999 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.6734122016666667 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.55652333333333 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0033206487941666667 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 6.522374073333334 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.5358025 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0012211545708333334 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 2.4993543233333333 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 90.7018375 | MDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0022293055558333334 | MDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 5.702021107499999 | MDM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 88.46995433333333 | LogVar + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0020454070625 | LogVar + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 5.637304889999999 | LogVar + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 88.38607883333333 | LogVar + LDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0012580402871666667 | LogVar + LDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 3.2995239900000004 | LogVar + LDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 82.2366395 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16067158750000002 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 16.823401416666666 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 69.41324841666666 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12495182708333334 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 14.432597083333334 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 61.559105 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.17477492000000003 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 20.40160175 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 97.25585694444443 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8372758266666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.48545766666667 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.44897994444445 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0007312805027777778 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.885060657222222 | TS + LR |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.44784577777777 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0018545968405555553 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 4.854808299999999 | TS + EL |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.00944755555555 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0013835059555555556 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 3.3391828388888887 | TS + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.54648549999999 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.24335663111111114 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.324833988888889 | FBCSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.52191866666666 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0006420009155555556 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 3.5817672655555555 | FgMDM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.00151144444445 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23494162666666668 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 27.16444661111111 | ShallowConvNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.5359025 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00046965705572222225 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.096713888888889 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.51511638888888 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0008947458374444445 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.750061953611111 | CSP + LDA |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.03968261111112 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0063117480444444445 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 11.314337022222222 | CSP + SVM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 89.12547266666667 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00043345056416666666 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.5749139627777777 | MDM |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 88.55026438888889 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.16107902277777777 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.505341833333333 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 88.27324277777778 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1293751948888889 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.970135055555554 | DeepConvNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.98148133333333 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.14507292438888889 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 16.651739888888887 | EEGITNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.20748333333333 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.22110831444444445 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 25.485177055555553 | EEGTCNet |
| Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 64.35903111111112 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.2859660588888889 | EEGNeX |
| Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.142690944444446 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 93.39429239999998 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.92276621 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 101.6704931 | ACM + TS + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 92.3246172 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.006040798 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 11.57989181 | TS + EL |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 91.8383288 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0059158554199999994 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 9.11110455 | TS + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 91.5263066 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.001118637826 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 4.60279952 | TS + LR |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.696109 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 19.651363984 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 84.42076999999999 | ShallowConvNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.6372764 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0101869405 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 14.5114632 | CSP + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.59406740000001 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0004474954558 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 2.7403618635 | CSP + LDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.55835479999999 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00180466725 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 3.8331035200000003 | FgMDM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.4768809 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0007442022196 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 4.568564723 | DLCSPauto + shLDA |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.26785749999999 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.568418502 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 3.09451051 | FBCSP + SVM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.28683079999999 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 19.414860764000004 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 35.9970033 | DeepConvNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 78.1468433 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 4.84414613 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 24.251992 | EEGNet-8,2 |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 65.18000699999999 | MDM |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.000844543333 | MDM |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 2.796476937 | MDM |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 62.538903499999996 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.962777576000001 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 19.2195519 | EEGITNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 62.3676652 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.512717858499999 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 29.570441 | EEGTCNet |
| Motor Imagery | Weibo2014 MOABB | AUC-ROC | 60.17745599999999 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 16.597322944000002 | EEGNeX |
| Motor Imagery | Weibo2014 MOABB | training time (s) | 44.7978774 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 97.20956825 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12496935208333333 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 4.858959566666667 | ACM + TS + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 97.06439391666666 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1509912575 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 18.427412083333333 | ShallowConvNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.76458083333334 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005349374241666666 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.08235803066666667 | TS + LR |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.58612958333333 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0005289931975 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7517524533333333 | TS + EL |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.10875391666666 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0005871264258333333 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7894516191666666 | TS + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.03910916666666 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00010140754249999999 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.23585249774999997 | FgMDM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.91615191666666 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.08542806208333333 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 10.515160691666667 | DeepConvNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.19816666666668 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005386587691666667 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.12567347733333334 | CSP + LDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.95107591666667 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00316684425 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 4.423639016666667 | CSP + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.63445591666667 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13053382583333334 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7107954383333334 | FBCSP + SVM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.58252499999999 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.09276203341666667 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 11.2586846 | EEGNet-8,2 |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.43122416666667 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005045180425 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.10749997658333332 | DLCSPauto + shLDA |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.21307508333332 | MDM |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00003917033591666667 | MDM |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 0.062127622166666674 | MDM |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 85.46364075 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13808337241666666 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 16.91200925 | EEGTCNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 80.40247383333333 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.10409523749999999 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 12.826676 | EEGITNet |
| Motor Imagery | Zhou2016 MOABB | AUC-ROC | 64.79907375 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.17851248916666665 | EEGNeX |
| Motor Imagery | Zhou2016 MOABB | training time (s) | 21.63750320833333 | EEGNeX |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 92.30178571428571 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.38974278 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 16.371186375 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.56785714285715 | FBCSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.9452996678571429 | FBCSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 4.884339850000001 | FBCSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.40714285714286 | ShallowConvNet |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.240711847 | ShallowConvNet |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 29.228367535714284 | ShallowConvNet |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.19107142857142 | TS + EL |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0021765681464285713 | TS + EL |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 3.0829317250000003 | TS + EL |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.09285714285714 | TS + LR |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0016561550864285714 | TS + LR |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 3.2331909737499998 | TS + LR |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.80535714285715 | TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.002693355064285714 | TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 4.09123845 | TS + SVM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.43214285714286 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.14237826092857142 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 17.193978785714286 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.18214285714286 | FgMDM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000829699048642857 | FgMDM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.5857523525357142 | FgMDM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 89.19285714285714 | CSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.009411417503571428 | CSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 11.710567267857144 | CSP + SVM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.87321428571428 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0005799335712857143 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.1508428444642858 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.52321428571429 | CSP + LDA |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000595994413607143 | CSP + LDA |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.07737538725 | CSP + LDA |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.12321428571428 | DeepConvNet |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.12839999017857143 | DeepConvNet |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 15.592928589285714 | DeepConvNet |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 86.20357142857144 | MDM |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0007177980582857143 | MDM |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.3408162827142858 | MDM |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 77.21160714285715 | EEGTCNet |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.18671340807142858 | EEGTCNet |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 22.635748839285714 | EEGTCNet |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 72.33571428571429 | EEGNeX |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.34515593464285715 | EEGNeX |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 41.56138553571429 | EEGNeX |
| Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 71.94642857142857 | EEGITNet |
| Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.16193158389285714 | EEGITNet |
| Motor Imagery | BNCI2015-001 MOABB | training time (s) | 19.546656482142858 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.9680807142857 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.63215142142857 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 330.0909378571428 | ACM + TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.72027014285713 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3588719162857143 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 349.39148821428574 | TS + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.59824428571429 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014680511778571428 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 13.988061071428572 | TS + LR |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.56472542857144 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3353505528571428 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 327.06053857142854 | TS + EL |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.47625814285713 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.089541701 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 82.60363664285714 | FgMDM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.05647592857143 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 40.59940300142857 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 320.2012192857143 | ShallowConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.50308285714286 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04334756092857143 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 45.233243214285714 | CSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.39603707142858 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 36.42587592857143 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 198.47335871428572 | FBCSP + SVM |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.14958464285715 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 29.02176669 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 280.00296785714283 | EEGTCNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.02462435714286 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00044260885642857144 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 0.5883504935714285 | CSP + LDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.95337171428572 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0004114472164285714 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 0.5423086028571429 | DLCSPauto + shLDA |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.49739557142858 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.778447587857142 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 91.89510485714287 | EEGNet-8,2 |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.04328542857142 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.278272536428571 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 130.05448907142858 | EEGITNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 95.901341 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.213161058571428 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 106.127537 | DeepConvNet |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 89.48676185714287 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 42.28841732428571 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 464.49325142857145 | EEGNeX |
| Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 84.6734955 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.012343685785714287 | MDM |
| Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 11.868311578571427 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 94.27232417431192 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002292956512844037 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.69788353027523 | TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 94.09464829357799 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0023048844770642203 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.660472736697248 | TS + EL |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 93.72140674311926 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.3743661817798165 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.275803577981652 | ACM + TS + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 93.14561674311926 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0011862718552201835 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.9450754762385323 | TS + LR |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 89.6715086146789 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016952853321100917 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.6619959064220184 | FgMDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 88.03649339449541 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.004252216568807339 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 7.574546786238533 | CSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 86.80902140366973 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006039077076697248 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.9964198499449541 | DLCSPauto + shLDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 86.41442402752293 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006479088561559633 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.1433882502201835 | CSP + LDA |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 83.96839963302753 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2592725837798165 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.4225005266055046 | FBCSP + SVM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 81.77716613761469 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0009060356478532111 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.9963101233394496 | MDM |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 74.75147803669724 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7205820762752294 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.103473417431193 | ShallowConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 73.77573903669725 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7542787600917431 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.662491354128441 | EEGNet-8,2 |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 71.49345055045872 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.596559912321101 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 17.621344155963303 | DeepConvNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 57.02803262385321 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.8152764195963302 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.905036509174312 | EEGTCNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 54.69051987155964 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.4469922132752293 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.05607252293578 | EEGITNet |
| Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 51.76753313761468 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.6592816424495412 | EEGNeX |
| Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 15.441041990825688 | EEGNeX |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.645089 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.44054961000000004 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 18.66545185714286 | ACM + TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.600446 | ShallowConvNet |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.242558344 | ShallowConvNet |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 27.519666214285714 | ShallowConvNet |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.56138435714286 | DeepConvNet |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14939979285714286 | DeepConvNet |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.94769892857143 | DeepConvNet |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 86.19419642857142 | TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0012505346957142856 | TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 2.250145164285714 | TS + SVM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 85.97656321428572 | TS + EL |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0011540398678571429 | TS + EL |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 2.0496247785714288 | TS + EL |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 85.85937435714285 | TS + LR |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00019676502564285715 | TS + LR |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.7383969874999999 | TS + LR |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 84.76562464285713 | FgMDM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00011930851807142857 | FgMDM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.2638224375 | FgMDM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 83.93415214285714 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14752584 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.83683 | EEGNet-8,2 |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 81.21093692857143 | CSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.005598228914285714 | CSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 8.607374964285714 | CSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.98214378571429 | CSP + LDA |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00014398938164285712 | CSP + LDA |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.32359593000000003 | CSP + LDA |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.44642807142857 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00027854637564285716 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 1.0558947701428572 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.39062507142857 | FBCSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.27677554071428573 | FBCSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 1.506631742857143 | FBCSP + SVM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 77.48325942857143 | MDM |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0001488995962142857 | MDM |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.5031258411428572 | MDM |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 73.92299242857143 | EEGTCNet |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.21598919785714285 | EEGTCNet |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 24.45626664285714 | EEGTCNet |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 70.89843778571428 | EEGITNet |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14692778499999998 | EEGITNet |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.739025642857143 | EEGITNet |
| Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 69.94977778571429 | EEGNeX |
| Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.357494305 | EEGNeX |
| Motor Imagery | BNCI2014-002 MOABB | training time (s) | 40.932428357142854 | EEGNeX |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 62.55243744444444 | TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0030399768388888887 | TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 3.981446488888889 | TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 62.00432277777777 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.9881697544444444 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 38.20503083333333 | ACM + TS + SVM |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 61.008716111111106 | TS + LR |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014654134566666668 | TS + LR |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 2.3641572122222225 | TS + LR |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 58.70323127777778 | TS + EL |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.003150417694444444 | TS + EL |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 4.107975877777778 | TS + EL |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 58.31313783333333 | FgMDM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.00262010596 | FgMDM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 4.208450687777778 | FgMDM |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 57.22930833333333 | ShallowConvNet |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.17052666777777778 | ShallowConvNet |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 19.448256999999998 | ShallowConvNet |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 57.07518416666667 | DeepConvNet |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1387313113888889 | DeepConvNet |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 15.772786944444444 | DeepConvNet |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 54.19855455555555 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.11595792811111111 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 13.1632145 | EEGNet-8,2 |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 54.02069177777777 | CSP + LDA |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014029495131111112 | CSP + LDA |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 2.2638508043333334 | CSP + LDA |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 53.02189611111111 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0022248175055555553 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 3.5652031144444445 | DLCSPauto + shLDA |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 53.01977022222223 | EEGNeX |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.2742768266666667 | EEGNeX |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 31.471043611111114 | EEGNeX |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 52.50602344444445 | FBCSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.16502183722222222 | FBCSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 0.8984944177777778 | FBCSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 52.0801445 | CSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0062806895666666675 | CSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 7.718107805555555 | CSP + SVM |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 51.408021500000004 | EEGITNet |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.14264759755555556 | EEGITNet |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 16.165079277777778 | EEGITNet |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 51.220592611111115 | EEGTCNet |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1444858745 | EEGTCNet |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 16.36140288888889 | EEGTCNet |
| Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 48.451672277777774 | MDM |
| Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0008106952038888889 | MDM |
| Motor Imagery | BNCI2015-004 MOABB | training time (s) | 1.3395202661111112 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 83.75 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000240011290125 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.390257074875 | TS + LR |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 83.59375 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1485686325 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 5.5518258375 | ACM + TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 82.65625 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000746707585 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 3.0611184312499997 | TS + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 81.40625 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00053827818375 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.177448355 | TS + EL |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 80.78125 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.213897607 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.1647642375 | FBCSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 79.84375 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00010770661525000001 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.419455321625 | FgMDM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 78.59375 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0020791944125 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 4.649679825 | CSP + SVM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 77.1875 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00078139250425 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.24472090125 | CSP + LDA |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 77.03125 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000210748843625 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.96225866875 | DLCSPauto + shLDA |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 74.21875 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00035755518724999997 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.244058851625 | MDM |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.21616533875 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 22.844518 | EEGNet-8,2 |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.274686495 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 29.150003124999998 | ShallowConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 61.875 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1890227225 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 20.30683625 | DeepConvNet |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 61.09375 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32988478875 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 34.859817375 | EEGTCNet |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 52.34375 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32373731 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 34.4930355 | EEGNeX |
| Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 47.5 | EEGITNet |
| Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.23635414124999998 | EEGITNet |
| Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 25.280098125 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 59.934408990825695 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.013059559739449542 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 25.291020102752295 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 58.55441266055046 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0010041190067889907 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.2208920137614676 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 58.458600238532114 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0243752586293578 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 48.31867250642202 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 56.68057317948718 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.330426302205128 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 92.28611607692308 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 55.0438009174312 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002020601044036697 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.204224353211009 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 48.51775490825688 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.9742764488073394 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1190.5449858715597 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 47.73427576146789 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0054728938412844045 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 8.780583234862386 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 46.84880671559633 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.005456309299082569 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 8.482141944036696 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 45.493503000000004 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.06618156533027524 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 68.7581273853211 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 42.96454042201835 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.003281270780733945 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.167569839633027 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 41.87124210091743 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.038677560009174314 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 15.891879321100918 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 29.03593889908257 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.024848891426605502 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 10.598362683486238 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 27.682707357798165 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.034966375495412844 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.11812210091743 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 26.68615756880734 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.059308609688073395 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 22.783741321100916 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 26.154798385321104 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4149273854862385 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.559821752293578 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | Accuracy | 25.790262357798166 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.7750069540733944 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 18.127433243119267 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 64.3835718 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 6.1498658200000005 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 335.21023 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 63.840714199999994 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0319534623 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 34.0226515 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 62.762142 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00205973584 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 2.12094548 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 61.469286499999995 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.014714955200000001 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 15.092744999999999 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 56.9400009 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00332279971 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 3.4260148399999997 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 48.9364276 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 22.743277258 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 100.2113981 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 45.212857299999996 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.030076381000000003 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 37.9020129 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 44.0792858 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.5357583659999999 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 677.4126650000001 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 39.4492859 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0037056161800000003 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 4.84518394 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 38.8442857 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00369364373 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 4.82886682 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 35.3514286 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 10.5262206565 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 34.2388724 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 33.4078569 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00188059405 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 2.01196917 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 30.215714 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 35.190156514 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 126.255782 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 25.7807146 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 13.394392257000002 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 43.4866037 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 24.1678569 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 30.440530905000003 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 73.0829022 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | Accuracy | 17.9464288 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 15.281205185 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 47.42458 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.79166675 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0013501269012499999 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.749322665 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.5833345 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.18950154875 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 7.6877846125 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 69.16666637499999 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000786763229625 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.85145594625 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 67.916665875 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00173950673625 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 3.3987408749999997 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 65.62500112500001 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00038144418074999997 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.743955544625 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 65 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.005079346375 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 19.6318726375 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 62.91666625 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.03446902725 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 44.612727875000004 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 61.041666500000005 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0005938407575 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.0782176175 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 60.62500012500001 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0003630056075 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.6206318012500001 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 60.62499999999999 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000925614838125 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.6782885705 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 50.00000075 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.21283768775 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 12.9602863125 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 43.958333875 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.673163054 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.24752825 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 37.708333625 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 3.1961726155 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.8963939375 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 37.7083335 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.546965218875 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 8.58771105 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 36.041667 | EEGITNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 1.109086602625 | EEGITNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.4757763125 | EEGITNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | Accuracy | 34.166666875 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 2.198906455875 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 9.205565762500001 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 77.88163016666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 1.7743017888888888 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 73.50212961111112 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 72.47227177777778 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.394738715 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 45.877247277777776 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 72.38119294444444 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006551190227777778 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.852831627777778 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 71.97351649999999 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004666705854444444 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 19.167550810555554 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 70.75586455555556 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01799459135 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 66.23056458333332 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 70.14149394444445 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.014329298037222223 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 59.714323183333335 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.88411633333334 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1285738541111111 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 147.7146591111111 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.52618122222222 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.004104928794444445 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 5.445951 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 66.3070505 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0028627887866666665 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 9.741079583888888 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 65.994152 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010921193731666667 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 52.462251144444444 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 61.600793277777775 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.012491149514444445 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 75.09591532444445 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 60.46380244444445 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1871718811111111 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 21.723354222222223 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 45.61672333333334 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.5342137127777778 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 62.59321944444444 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 41.64616544444444 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.28639946055555554 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.0790875 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 35.54681733333334 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1578935777777778 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.299775611111112 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | Accuracy | 35.29273355555556 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.15884736222222223 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.38852738888889 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 85.85246441666668 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1941063975 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 7.277364225 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 85.02304108333334 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.21728041750000002 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 24.664789916666667 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 84.87930308333334 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.004125581083333333 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 14.9374373825 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 84.53929741666667 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.025638485455833332 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 75.6071288 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 83.65528725 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.013120034294166666 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 39.13084056666667 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 83.33782725 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16457950333333335 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 18.622367166666667 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 83.08474258333334 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.04421750124999999 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 129.06390283333334 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 83.07198441666667 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.010749338934166667 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 71.767263065 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 82.9630775 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.008406058218333333 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 46.6342523525 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 82.06140125 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0014094379383333333 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 8.307476150833333 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 81.98970291666666 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00143389045 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 1.8146779000000002 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 76.04754891666667 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0013000749791666668 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 8.044291825 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 56.41506 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.29802479833333334 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 34.04211566666667 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 55.691373 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11693505166666666 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 13.242306708333333 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 50.67784558333334 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16801267050000002 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 19.01079075 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | Accuracy | 37.193690833333335 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12480563316666667 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 14.080227958333333 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.52905985714287 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.16102813214285713 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 86.77469099999999 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.39824135714285 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 20.32321697142857 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 707.9741635714284 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 85.13492092857142 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.612351642857143 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 1877.5478428571428 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 84.59829828571428 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0075348416357142855 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 4.9577661214285715 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 84.41288664285715 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04492253178571428 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 23.104729499999998 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 82.97360807142857 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.09652152407142857 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 61.4208665 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 76.98508007142857 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.9416739878571428 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 214.51948785714285 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 75.93963142857143 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.1834183317857143 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 181.90692642857144 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 75.88554942857144 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.8806029271428572 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 531.3518721428571 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 72.97147700000001 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004620156871428571 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 3.027175342857143 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 72.8150212857143 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.004526741521428572 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 2.9170686285714287 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 71.11233471428572 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 2.0679361071428572 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 471.15728 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 70.44199514285714 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.478115302857143 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 336.80249142857144 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 67.55850299999999 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 4.719508371428572 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 1075.1257621428572 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 56.77987328571429 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 1.7812169435714285 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 405.86182285714284 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | Accuracy | 52.03144735714286 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.007416166485714286 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 4.819618021428572 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.4798674678899 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.4211595544036697 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.023694665137615 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.45973491743119 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0030451742727522933 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.395441841284404 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 68.17686030275229 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002011187666788991 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.376171044495413 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.9113149174312 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002922431799908257 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 6.133613628073395 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.28338431192661 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016746719404036696 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.225256745229358 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 67.2357288440367 | TRCSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002136693423082569 | TRCSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.659003014128441 | TRCSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.74796130275229 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0015942293279908256 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.20135004233945 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.71304793577983 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0033223538248623855 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 7.022697680733945 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.1939347614679 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.6320094714220184 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.345875044954127 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 65.07415901834862 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0012151826062018348 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.403307553027523 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 62.34913353211009 | LogVar + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016599262179357798 | LogVar + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.982814494036697 | LogVar + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 61.938583036697246 | LogVar + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0024540891949541284 | LogVar + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 5.312168379816514 | LogVar + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 59.57492357798165 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.1069343064220183 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 9.95131664587156 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 59.552752311926604 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.5409163972477065 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.154883428440368 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 58.44724773394495 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2997174272477064 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.6316544247706422 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 55.90341492660551 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8180092174311926 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.434462706422018 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 54.75993883486239 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0019827723381192664 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.593253893211009 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 52.70922529357799 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.407468192660551 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 11.497989633027524 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 51.19622834862385 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.8861695403669723 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.67985970183486 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 82.0049287111111 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.02593451466666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.439084654222222 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.39444377777778 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.14387416055555555 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 0.783375099111111 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.0956668888889 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005452296241333334 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.2460348456222223 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 80.09376537777779 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006557710575999999 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.7434176553111111 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.87291397777778 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006216743171333333 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.8661370398 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.78218279999999 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006737686001777777 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.457821241711111 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.75479504444445 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0010797430764444445 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.079450579777778 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.41006457777777 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.001196510487111111 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.356883378 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.28086771111111 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0006603817830888889 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.5159122454666667 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 79.27025824444443 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.004687019133333334 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 6.61830888 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 78.50732679999999 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0005384169830822222 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 1.2824246142888889 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 78.29806786666667 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0008958152281111112 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 2.0932973742222223 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 77.65547846666666 | MDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.0003528847734 | MDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 0.9042913831777778 | MDM |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 72.35971368888889 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.05743548577777778 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 6.921017688888888 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 72.35753537777777 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.08229932173333333 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 9.503357968888889 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 69.69639757777777 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.12710436082222223 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 15.25518438888889 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 69.498559 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.07430071106666666 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 8.935735724444443 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 66.52779386666666 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.10765803022222223 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 13.068636999999999 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | AUC-ROC | 65.09554904444444 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | CO2 Emission (g) | 0.09232083362222221 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-004 MOABB | training time (s) | 11.108478222222223 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 85.2855546 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.01054370724 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 16.70190309 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.835458 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.47882039 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 329.502181 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.7230547 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.01144170013 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 19.7101636 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 83.6191015 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.007658937971 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 17.19314084 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 80.7190701 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.003059077913 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 5.572459653 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 80.16262729999998 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0042039635710000006 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 8.469146077 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.8404006 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0187107375 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 25.68750405 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.32908119999999 | TRCSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.001778520405 | TRCSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 3.318742769 | TRCSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.0972572 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.357279468 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 61.683436400000005 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 78.41374400000001 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00607642027 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 10.29490904 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 76.81202040000001 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.589712181 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 3.2107585999999997 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 74.852519 | LogVar + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00979238033 | LogVar + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 19.02302114 | LogVar + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 74.1323346 | LogVar + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.002844444774 | LogVar + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 5.320173393999999 | LogVar + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 73.6449296 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.3282129534 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 34.809638 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 66.4564741 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.7898681898000001 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 19.67945195 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 63.16485980000001 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.5258725022999999 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 28.1203618 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 59.3464601 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 1.1843646793 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 20.2672368 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 58.801497999999995 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.004551940515 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 8.631213726 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 57.965879799999996 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.6715904881 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 42.3490198 | EEGNeX |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 89.2466661 | TS + EL |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.269148976 | TS + EL |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 243.142401 | TS + EL |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 88.0777776 | TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.28341764999999997 | TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 265.222582 | TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.60000099999999 | TS + LR |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0139535835 | TS + LR |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 34.60417205 | TS + LR |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.42888820000002 | ACM + TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 6.55720808 | ACM + TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 325.665074 | ACM + TS + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 87.0177778 | FgMDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.15610860310000002 | FgMDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 85.13785279999999 | FgMDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 86.52888920000001 | ShallowConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 2.3070343 | ShallowConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 277.2352575 | ShallowConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 83.0155557 | EEGNet-8,2 |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9723642659999999 | EEGNet-8,2 |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 117.19713259999999 | EEGNet-8,2 |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 82.382222 | DeepConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.9234428940000001 | DeepConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 110.56912460000001 | DeepConvNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 81.7311101 | LogVar + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.00362474352 | LogVar + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 6.762669579999999 | LogVar + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 79.6511118 | FBCSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 21.6308037 | FBCSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 117.8105055 | FBCSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 78.7111117 | LogVar + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000772556251 | LogVar + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 4.040722504 | LogVar + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 78.2866669 | TRCSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.002421635666 | TRCSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 14.640627636 | TRCSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 77.8066665 | CSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.0356465945 | CSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 37.7887083 | CSP + SVM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 76.4377781 | CSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.000984520588 | CSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 4.92442061 | CSP + LDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 76.4022231 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.001667790323 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 8.404077422 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 72.18666590000001 | EEGITNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.8872510549999999 | EEGITNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 106.55474389999999 | EEGITNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 68.4511113 | EEGTCNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 1.518727995 | EEGTCNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 183.107304 | EEGTCNet |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 64.291111 | MDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 0.01076914422 | MDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 14.947136800000001 | MDM |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | AUC-ROC | 56.99555540000001 | EEGNeX |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | CO2 Emission (g) | 3.4729265 | EEGNeX |
| Within-Session Motor Imagery | GrosseWentrup2009 MOABB | training time (s) | 422.45747300000005 | EEGNeX |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 72.29885057471265 | CSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0031280651400344825 | CSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 6.032976467126437 | CSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.97701149425288 | ACM + TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.44081082241379316 | ACM + TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 18.935673712643677 | ACM + TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.86206896551724 | FgMDM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.006155834353908047 | FgMDM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 12.416171135632183 | FgMDM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.3448275862069 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.002772973099505747 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 5.865132493643678 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 70.11494252873564 | CSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.005158950352873563 | CSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 9.313418644827586 | CSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 69.3103448275862 | TS + LR |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0020542086796666668 | TS + LR |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 4.086728204942529 | TS + LR |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 68.67816091954023 | TS + EL |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00418902949183908 | TS + EL |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 7.833182418390805 | TS + EL |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 68.44827586206897 | TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00357418835862069 | TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 7.287723882183908 | TS + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 67.29885057471265 | TRCSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0028938624342988504 | TRCSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 5.785437376344828 | TRCSP + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 65.63218390804599 | FBCSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.05493400862068966 | FBCSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 0.29933049333333334 | FBCSP + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 62.98850574712643 | MDM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.002936805686195402 | MDM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 6.130959453310345 | MDM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 61.7816091954023 | LogVar + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.0037351209763448272 | LogVar + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 7.392233189712644 | LogVar + LDA |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 61.37931034482759 | LogVar + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 0.00378480009954023 | LogVar + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 7.829565021494252 | LogVar + SVM |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 60.80459770114942 | ShallowConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 13.571865731034483 | ShallowConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 73.86500129885057 | ShallowConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 57.98850574712644 | EEGNet-8,2 |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 9.758972163218392 | EEGNet-8,2 |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 53.113962264367814 | EEGNet-8,2 |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 56.03448275862068 | DeepConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 5.162565710344827 | DeepConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 28.097837931034483 | DeepConvNet |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 52.18390804597701 | EEGITNet |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 8.672446098850575 | EEGITNet |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 47.200400390804596 | EEGITNet |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 51.26436781609196 | EEGTCNet |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 21.768854620689655 | EEGTCNet |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 118.47680619540229 | EEGTCNet |
| Within-Session Motor Imagery | Shin2017A MOABB | AUC-ROC | 49.02298850574712 | EEGNeX |
| Within-Session Motor Imagery | Shin2017A MOABB | CO2 Emission (g) | 16.20613807471264 | EEGNeX |
| Within-Session Motor Imagery | Shin2017A MOABB | training time (s) | 88.2030973908046 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 88.70422614285715 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.49335965 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 327.9551457142857 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 88.64610935714285 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.044947839499999996 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 27.018976428571428 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 87.64284414285714 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020339250814285715 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 11.905010892857144 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 87.21996714285714 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005596339442857143 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 8.187318035714286 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 86.71347114285714 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.10021865657142857 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 67.09638471428572 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 84.81764307142858 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.48519369357142855 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 268.71988714285715 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 81.44109821428572 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 25.420092035714283 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 138.46111907142856 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 81.2303262857143 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19315654464285714 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 109.64171142857143 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 80.20351621428571 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.13953920821428573 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 87.55805742857142 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.41504057142856 | LogVar + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.020349772242857143 | LogVar + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 22.148402514285713 | LogVar + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.23637321428572 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.032244818214285716 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 23.25204464285714 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 79.1367927142857 | TRCSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.018842971650000002 | TRCSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 16.598896885714286 | TRCSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 78.43861257142856 | LogVar + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014727059297142856 | LogVar + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.265415285714285 | LogVar + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 77.23480071428571 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005735273075 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.583879442857143 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 77.02151357142857 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.005144324647142857 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 10.114322803571428 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 75.61966142857143 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.43859431071428573 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 261.3786007142857 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 74.66472221428572 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.19887899714285712 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 113.00491099999999 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 68.58403092857142 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.6476672135714285 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 341.07117250000005 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 61.52606428571429 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00449722365 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 5.6453727 | MDM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 76.2289796153846 | TS + EL |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.008755807778846155 | TS + EL |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 13.766507201923076 | TS + EL |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 75.52711013461538 | ACM + TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 1.8557469153846153 | ACM + TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 62.31514830769231 | ACM + TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 75.00852038461538 | TS + LR |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0018744818367307692 | TS + LR |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 6.214885324999999 | TS + LR |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 74.61810898076924 | TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.008696662651923077 | TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 12.687089688461539 | TS + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 73.83557690384616 | ShallowConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.058521977903846154 | ShallowConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 46.979712846153845 | ShallowConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 72.89826388461537 | FgMDM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.002231383398076923 | FgMDM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 4.56839715 | FgMDM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.92080661538462 | CSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.013585275634615385 | CSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 20.833295817307693 | CSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.84767628846154 | TRCSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.001189626241 | TRCSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 3.8611871384615384 | TRCSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.67248932692308 | DeepConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.2637025025 | DeepConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 60.08802442307693 | DeepConvNet |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.38116988461539 | CSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0011575846306923075 | CSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 3.884574095846154 | CSP + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 71.15633009615384 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.001064577328173077 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 3.4957703001923077 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 67.90934826923076 | FBCSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.003133048219230769 | FBCSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 2.7608346807692308 | FBCSP + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 66.78533653846154 | EEGNet-8,2 |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.09790713498076922 | EEGNet-8,2 |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 22.314706884615383 | EEGNet-8,2 |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 65.46407580769231 | LogVar + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0015806333348076923 | LogVar + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 4.417776592307693 | LogVar + SVM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 64.49059826923077 | LogVar + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.0009515043146153847 | LogVar + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 2.7242354466346157 | LogVar + LDA |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 63.39276176923077 | MDM |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.00237880536 | MDM |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 6.796549341730769 | MDM |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 58.33552344230769 | EEGTCNet |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.1190211419423077 | EEGTCNet |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 27.13974953846154 | EEGTCNet |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 57.196153846153855 | EEGITNet |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.11474572860576923 | EEGITNet |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 26.596911269230766 | EEGITNet |
| Within-Session Motor Imagery | Cho2017 MOABB | AUC-ROC | 53.279941384615384 | EEGNeX |
| Within-Session Motor Imagery | Cho2017 MOABB | CO2 Emission (g) | 0.2174445951923077 | EEGNeX |
| Within-Session Motor Imagery | Cho2017 MOABB | training time (s) | 49.56457763461538 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.87717316666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8832741538888889 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 37.19322716666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 87.4123206111111 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.023651943657777775 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 91.08604166666666 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.52796605555557 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03423917689166667 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 58.82106999444444 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.47732361111112 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.021483784244444443 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 40.16215047222222 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.44255583333333 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.010235186905555556 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 23.73425226666667 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 86.16591022222222 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23767624 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 28.300448333333332 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 84.4368855 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.30146339333333333 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.6411384872222223 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 83.07369627777778 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.03449044713888889 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 60.17366931666667 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.74829922222222 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.006283899536444444 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 21.795549848888886 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.33597905555557 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.01768477408111111 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 26.033208126666665 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 82.07331861111112 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.11586982311111112 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.686492722222221 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 81.69425572222222 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.02021859091111111 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 42.17484379888889 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 79.83560116666666 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.008658991335722222 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.69900212111111 | TRCSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 77.95615972222222 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.005686139496333334 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 13.134125769444445 | LogVar + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 77.15268383333334 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.12332580900000001 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.563619111111112 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.86092177777778 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.007728553635555556 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 15.609176037777777 | LogVar + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.27399844444444 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1597577938888889 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.952416222222222 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 67.46182961111111 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.18110872972222222 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 20.17755577777778 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 66.28193516666667 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.31804718277777777 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 38.14933605555555 | EEGNeX |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 84.74444444444444 | TS + EL |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.002646718319444444 | TS + EL |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.678475692592593 | TS + EL |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 84.16666666666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.8164949121481482 | ACM + TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 29.706403990740743 | ACM + TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 83.57037037037037 | TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0024145104012962965 | TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 5.273111012962963 | TS + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 83.09259259259258 | TS + LR |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0008697607500925927 | TS + LR |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 2.4829364574074075 | TS + LR |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 81.3425925925926 | FgMDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0021175731353703705 | FgMDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 5.031711893518518 | FgMDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 77.27037037037037 | CSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.005258449698148148 | CSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 8.139176210185186 | CSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.88148148148147 | CSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0012470851392592593 | CSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.3465501966666666 | CSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.68703703703704 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0014866114661481482 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.686696781111111 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 76.2611111111111 | TRCSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.001290584364037037 | TRCSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.8623176347222223 | TRCSP + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 75.82777777777778 | ShallowConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0627169262962963 | ShallowConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 52.18373611111111 | ShallowConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 75.07222222222222 | FBCSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.4983456616666667 | FBCSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 2.7125740925925927 | FBCSP + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 73.83148148148148 | LogVar + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0023018676362962964 | LogVar + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 4.534608688425926 | LogVar + SVM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 70.64722222222223 | DeepConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.08747840010185186 | DeepConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 19.933118574074072 | DeepConvNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 70.22962962962963 | MDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.00100529917 | MDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 3.1416363901851856 | MDM |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 66.21296296296296 | LogVar + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.0026458692239444445 | LogVar + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 6.251461617777778 | LogVar + LDA |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 65.67222222222222 | EEGNet-8,2 |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.06521628261574074 | EEGNet-8,2 |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 14.961433282407407 | EEGNet-8,2 |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 59.166666666666664 | EEGITNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.08459861206481481 | EEGITNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 19.277117560185186 | EEGITNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 55.681481481481484 | EEGTCNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.07880292099074075 | EEGTCNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 17.962674342592592 | EEGTCNet |
| Within-Session Motor Imagery | Lee2019-MI MOABB | AUC-ROC | 55.12222222222223 | EEGNeX |
| Within-Session Motor Imagery | Lee2019-MI MOABB | CO2 Emission (g) | 0.17330265775 | EEGNeX |
| Within-Session Motor Imagery | Lee2019-MI MOABB | training time (s) | 39.780105 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.65019116666667 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1549817675 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 18.007408791666666 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.18760766666666 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13623877575 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 4.912889991666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.84044641666665 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11864727041666667 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 13.72778775 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.41753624999998 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.11453622516666667 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 13.273857999999999 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.35313333333333 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0018601271058333332 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 3.7908793 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.16005008333333 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0007884223154166666 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 2.283726725 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.533263 | TRCSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0009910642599999999 | TRCSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 2.9101597717500005 | TRCSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.37149766666667 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0025104166216666666 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 5.204099866666667 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 93.14890566666666 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0006859483835833334 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 1.3644024541666664 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.96259333333333 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.006482190183333333 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 10.441263425 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.63712633333334 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12367576549999999 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.6734122016666667 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.55652333333333 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0033206487941666667 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 6.522374073333334 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.5358025 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0012211545708333334 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 2.4993543233333333 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 90.7018375 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0022293055558333334 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 5.702021107499999 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 88.46995433333333 | LogVar + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0020454070625 | LogVar + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 5.637304889999999 | LogVar + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 88.38607883333333 | LogVar + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0012580402871666667 | LogVar + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 3.2995239900000004 | LogVar + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 82.2366395 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.16067158750000002 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 16.823401416666666 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 69.41324841666666 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12495182708333334 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 14.432597083333334 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 61.559105 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.17477492000000003 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 20.40160175 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 97.25585694444443 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.8372758266666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.48545766666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.44897994444445 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0007312805027777778 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.885060657222222 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.44784577777777 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0018545968405555553 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 4.854808299999999 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 94.00944755555555 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0013835059555555556 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 3.3391828388888887 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.54648549999999 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.24335663111111114 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.324833988888889 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.52191866666666 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0006420009155555556 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 3.5817672655555555 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 93.00151144444445 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.23494162666666668 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 27.16444661111111 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.5359025 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00046965705572222225 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.096713888888889 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.51511638888888 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0008947458374444445 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 2.750061953611111 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 91.03968261111112 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.0063117480444444445 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 11.314337022222222 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 89.12547266666667 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.00043345056416666666 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 1.5749139627777777 | MDM |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 88.55026438888889 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.16107902277777777 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 18.505341833333333 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 88.27324277777778 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.1293751948888889 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 14.970135055555554 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.98148133333333 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.14507292438888889 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 16.651739888888887 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 75.20748333333333 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.22110831444444445 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 25.485177055555553 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | AUC-ROC | 64.35903111111112 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | CO2 Emission (g) | 0.2859660588888889 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-001 MOABB | training time (s) | 33.142690944444446 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 93.39429239999998 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 2.92276621 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 101.6704931 | ACM + TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 92.3246172 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.006040798 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 11.57989181 | TS + EL |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 91.8383288 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0059158554199999994 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 9.11110455 | TS + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 91.5263066 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.001118637826 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 4.60279952 | TS + LR |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.696109 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 19.651363984 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 84.42076999999999 | ShallowConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.6372764 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0101869405 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 14.5114632 | CSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.59406740000001 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0004474954558 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 2.7403618635 | CSP + LDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.55835479999999 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.00180466725 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 3.8331035200000003 | FgMDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.4768809 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.0007442022196 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 4.568564723 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 88.26785749999999 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.568418502 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 3.09451051 | FBCSP + SVM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 79.28683079999999 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 19.414860764000004 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 35.9970033 | DeepConvNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 78.1468433 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 4.84414613 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 24.251992 | EEGNet-8,2 |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 65.18000699999999 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 0.000844543333 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 2.796476937 | MDM |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 62.538903499999996 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.962777576000001 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 19.2195519 | EEGITNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 62.3676652 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 7.512717858499999 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 29.570441 | EEGTCNet |
| Within-Session Motor Imagery | Weibo2014 MOABB | AUC-ROC | 60.17745599999999 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | CO2 Emission (g) | 16.597322944000002 | EEGNeX |
| Within-Session Motor Imagery | Weibo2014 MOABB | training time (s) | 44.7978774 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 97.20956825 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.12496935208333333 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 4.858959566666667 | ACM + TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 97.06439391666666 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.1509912575 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 18.427412083333333 | ShallowConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.76458083333334 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005349374241666666 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.08235803066666667 | TS + LR |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.58612958333333 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0005289931975 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7517524533333333 | TS + EL |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.10875391666666 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.0005871264258333333 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7894516191666666 | TS + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 96.03910916666666 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00010140754249999999 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.23585249774999997 | FgMDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.91615191666666 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.08542806208333333 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 10.515160691666667 | DeepConvNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 95.19816666666668 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005386587691666667 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.12567347733333334 | CSP + LDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.95107591666667 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00316684425 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 4.423639016666667 | CSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.63445591666667 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13053382583333334 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.7107954383333334 | FBCSP + SVM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.58252499999999 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.09276203341666667 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 11.2586846 | EEGNet-8,2 |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 94.43122416666667 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00005045180425 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.10749997658333332 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 92.21307508333332 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.00003917033591666667 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 0.062127622166666674 | MDM |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 85.46364075 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.13808337241666666 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 16.91200925 | EEGTCNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 80.40247383333333 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.10409523749999999 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 12.826676 | EEGITNet |
| Within-Session Motor Imagery | Zhou2016 MOABB | AUC-ROC | 64.79907375 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | CO2 Emission (g) | 0.17851248916666665 | EEGNeX |
| Within-Session Motor Imagery | Zhou2016 MOABB | training time (s) | 21.63750320833333 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 92.30178571428571 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.38974278 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 16.371186375 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.56785714285715 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.9452996678571429 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 4.884339850000001 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.40714285714286 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.240711847 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 29.228367535714284 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.19107142857142 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0021765681464285713 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 3.0829317250000003 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 91.09285714285714 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0016561550864285714 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 3.2331909737499998 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.80535714285715 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.002693355064285714 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 4.09123845 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.43214285714286 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.14237826092857142 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 17.193978785714286 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 90.18214285714286 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000829699048642857 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.5857523525357142 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 89.19285714285714 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.009411417503571428 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 11.710567267857144 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.87321428571428 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0005799335712857143 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.1508428444642858 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.52321428571429 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.000595994413607143 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.07737538725 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 88.12321428571428 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.12839999017857143 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 15.592928589285714 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 86.20357142857144 | MDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.0007177980582857143 | MDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 1.3408162827142858 | MDM |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 77.21160714285715 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.18671340807142858 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 22.635748839285714 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 72.33571428571429 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.34515593464285715 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 41.56138553571429 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | AUC-ROC | 71.94642857142857 | EEGITNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | CO2 Emission (g) | 0.16193158389285714 | EEGITNet |
| Within-Session Motor Imagery | BNCI2015-001 MOABB | training time (s) | 19.546656482142858 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.9680807142857 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 9.63215142142857 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 330.0909378571428 | ACM + TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.72027014285713 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3588719162857143 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 349.39148821428574 | TS + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.59824428571429 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.014680511778571428 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 13.988061071428572 | TS + LR |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.56472542857144 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.3353505528571428 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 327.06053857142854 | TS + EL |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.47625814285713 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.089541701 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 82.60363664285714 | FgMDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 98.05647592857143 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 40.59940300142857 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 320.2012192857143 | ShallowConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.50308285714286 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.04334756092857143 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 45.233243214285714 | CSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.39603707142858 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 36.42587592857143 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 198.47335871428572 | FBCSP + SVM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.14958464285715 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 29.02176669 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 280.00296785714283 | EEGTCNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 97.02462435714286 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.00044260885642857144 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 0.5883504935714285 | CSP + LDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.95337171428572 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.0004114472164285714 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 0.5423086028571429 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.49739557142858 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.778447587857142 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 91.89510485714287 | EEGNet-8,2 |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 96.04328542857142 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.278272536428571 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 130.05448907142858 | EEGITNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 95.901341 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 6.213161058571428 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 106.127537 | DeepConvNet |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 89.48676185714287 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 42.28841732428571 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 464.49325142857145 | EEGNeX |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | AUC-ROC | 84.6734955 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | CO2 Emission (g) | 0.012343685785714287 | MDM |
| Within-Session Motor Imagery | Schirrmeister2017 MOABB | training time (s) | 11.868311578571427 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 94.27232417431192 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.002292956512844037 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.69788353027523 | TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 94.09464829357799 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0023048844770642203 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 4.660472736697248 | TS + EL |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 93.72140674311926 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.3743661817798165 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 13.275803577981652 | ACM + TS + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 93.14561674311926 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0011862718552201835 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.9450754762385323 | TS + LR |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 89.6715086146789 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0016952853321100917 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 3.6619959064220184 | FgMDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 88.03649339449541 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.004252216568807339 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 7.574546786238533 | CSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 86.80902140366973 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006039077076697248 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.9964198499449541 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 86.41442402752293 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0006479088561559633 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.1433882502201835 | CSP + LDA |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 83.96839963302753 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.2592725837798165 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 1.4225005266055046 | FBCSP + SVM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 81.77716613761469 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.0009060356478532111 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 2.9963101233394496 | MDM |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 74.75147803669724 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7205820762752294 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.103473417431193 | ShallowConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 73.77573903669725 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.7542787600917431 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.662491354128441 | EEGNet-8,2 |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 71.49345055045872 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 2.596559912321101 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 17.621344155963303 | DeepConvNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 57.02803262385321 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.8152764195963302 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 12.905036509174312 | EEGTCNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 54.69051987155964 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 1.4469922132752293 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 14.05607252293578 | EEGITNet |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | AUC-ROC | 51.76753313761468 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | CO2 Emission (g) | 0.6592816424495412 | EEGNeX |
| Within-Session Motor Imagery | PhysionetMotorImagery MOABB | training time (s) | 15.441041990825688 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.645089 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.44054961000000004 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 18.66545185714286 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.600446 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.242558344 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 27.519666214285714 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 87.56138435714286 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14939979285714286 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.94769892857143 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 86.19419642857142 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0012505346957142856 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 2.250145164285714 | TS + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 85.97656321428572 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0011540398678571429 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 2.0496247785714288 | TS + EL |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 85.85937435714285 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00019676502564285715 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.7383969874999999 | TS + LR |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 84.76562464285713 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00011930851807142857 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.2638224375 | FgMDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 83.93415214285714 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14752584 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.83683 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 81.21093692857143 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.005598228914285714 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 8.607374964285714 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.98214378571429 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00014398938164285712 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.32359593000000003 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.44642807142857 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.00027854637564285716 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 1.0558947701428572 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 80.39062507142857 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.27677554071428573 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 1.506631742857143 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 77.48325942857143 | MDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.0001488995962142857 | MDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 0.5031258411428572 | MDM |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 73.92299242857143 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.21598919785714285 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 24.45626664285714 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 70.89843778571428 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.14692778499999998 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 16.739025642857143 | EEGITNet |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | AUC-ROC | 69.94977778571429 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | CO2 Emission (g) | 0.357494305 | EEGNeX |
| Within-Session Motor Imagery | BNCI2014-002 MOABB | training time (s) | 40.932428357142854 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 62.55243744444444 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0030399768388888887 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 3.981446488888889 | TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 62.00432277777777 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.9881697544444444 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 38.20503083333333 | ACM + TS + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 61.008716111111106 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014654134566666668 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 2.3641572122222225 | TS + LR |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 58.70323127777778 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.003150417694444444 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 4.107975877777778 | TS + EL |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 58.31313783333333 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.00262010596 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 4.208450687777778 | FgMDM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 57.22930833333333 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.17052666777777778 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 19.448256999999998 | ShallowConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 57.07518416666667 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1387313113888889 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 15.772786944444444 | DeepConvNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 54.19855455555555 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.11595792811111111 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 13.1632145 | EEGNet-8,2 |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 54.02069177777777 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0014029495131111112 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 2.2638508043333334 | CSP + LDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 53.02189611111111 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0022248175055555553 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 3.5652031144444445 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 53.01977022222223 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.2742768266666667 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 31.471043611111114 | EEGNeX |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 52.50602344444445 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.16502183722222222 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 0.8984944177777778 | FBCSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 52.0801445 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0062806895666666675 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 7.718107805555555 | CSP + SVM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 51.408021500000004 | EEGITNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.14264759755555556 | EEGITNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 16.165079277777778 | EEGITNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 51.220592611111115 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.1444858745 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 16.36140288888889 | EEGTCNet |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | AUC-ROC | 48.451672277777774 | MDM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | CO2 Emission (g) | 0.0008106952038888889 | MDM |
| Within-Session Motor Imagery | BNCI2015-004 MOABB | training time (s) | 1.3395202661111112 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 83.75 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000240011290125 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.390257074875 | TS + LR |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 83.59375 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1485686325 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 5.5518258375 | ACM + TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 82.65625 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000746707585 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 3.0611184312499997 | TS + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 81.40625 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00053827818375 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.177448355 | TS + EL |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 80.78125 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.213897607 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 1.1647642375 | FBCSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 79.84375 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00010770661525000001 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.419455321625 | FgMDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 78.59375 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.0020791944125 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 4.649679825 | CSP + SVM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 77.1875 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00078139250425 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.24472090125 | CSP + LDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 77.03125 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.000210748843625 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 0.96225866875 | DLCSPauto + shLDA |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 74.21875 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.00035755518724999997 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 2.244058851625 | MDM |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.21616533875 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 22.844518 | EEGNet-8,2 |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 64.21875 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.274686495 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 29.150003124999998 | ShallowConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 61.875 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.1890227225 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 20.30683625 | DeepConvNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 61.09375 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32988478875 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 34.859817375 | EEGTCNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 52.34375 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.32373731 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 34.4930355 | EEGNeX |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | AUC-ROC | 47.5 | EEGITNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | CO2 Emission (g) | 0.23635414124999998 | EEGITNet |
| Within-Session Motor Imagery | AlexandreMotorImagery MOABB | training time (s) | 25.280098125 | EEGITNet |
| ERP | EPFLP300 MOABB | AUC-ROC | 84.68838325 | EEGNeX |
| ERP | EPFLP300 MOABB | training time (s) | 35.690736875 | EEGNeX |
| ERP | EPFLP300 MOABB | AUC-ROC | 84.29081139285714 | XDAWNCov + TS + SVM |
| ERP | EPFLP300 MOABB | CO2 Emission (g) | 0.03015609335714286 | XDAWNCov + TS + SVM |
| ERP | EPFLP300 MOABB | training time (s) | 3.1239111678571425 | XDAWNCov + TS + SVM |
| ERP | EPFLP300 MOABB | AUC-ROC | 84.0994343125 | EEGITNet |
| ERP | EPFLP300 MOABB | training time (s) | 28.6127446875 | EEGITNet |
| ERP | EPFLP300 MOABB | AUC-ROC | 83.19801607142858 | XDAWNCov + MDM |
| ERP | EPFLP300 MOABB | CO2 Emission (g) | 0.006680508521428571 | XDAWNCov + MDM |
| ERP | EPFLP300 MOABB | training time (s) | 0.7105525185714285 | XDAWNCov + MDM |
| ERP | EPFLP300 MOABB | AUC-ROC | 80.3845744375 | EEGNet-8,2 |
| ERP | EPFLP300 MOABB | training time (s) | 15.535605484375 | EEGNet-8,2 |
| ERP | EPFLP300 MOABB | AUC-ROC | 75.556908 | ShallowConvNet |
| ERP | EPFLP300 MOABB | training time (s) | 15.697078703125 | ShallowConvNet |
| ERP | EPFLP300 MOABB | AUC-ROC | 71.973831125 | ERPCov + MDM |
| ERP | EPFLP300 MOABB | CO2 Emission (g) | 0.03419226534375 | ERPCov + MDM |
| ERP | EPFLP300 MOABB | training time (s) | 6.942208496875 | ERPCov + MDM |
| ERP | EPFLP300 MOABB | AUC-ROC | 71.444304125 | ERPCov(svd_n=4) + MDM |
| ERP | EPFLP300 MOABB | CO2 Emission (g) | 0.011323257109375 | ERPCov(svd_n=4) + MDM |
| ERP | EPFLP300 MOABB | training time (s) | 1.2007145884375 | ERPCov(svd_n=4) + MDM |
| ERP | EPFLP300 MOABB | AUC-ROC | 62.982488281250006 | XDAWN + LDA |
| ERP | EPFLP300 MOABB | CO2 Emission (g) | 0.018060430625 | XDAWN + LDA |
| ERP | EPFLP300 MOABB | training time (s) | 3.6105500875 | XDAWN + LDA |
| ERP | Sosulski2019 MOABB | AUC-ROC | 88.82306907692308 | EEGITNet |
| ERP | Sosulski2019 MOABB | training time (s) | 254.26117153846155 | EEGITNet |
| ERP | Sosulski2019 MOABB | AUC-ROC | 87.28411109999999 | XDAWNCov + TS + SVM |
| ERP | Sosulski2019 MOABB | CO2 Emission (g) | 0.027893668675 | XDAWNCov + TS + SVM |
| ERP | Sosulski2019 MOABB | training time (s) | 4.33317254 | XDAWNCov + TS + SVM |
| ERP | Sosulski2019 MOABB | AUC-ROC | 87.13865323076924 | EEGNet-8,2 |
| ERP | Sosulski2019 MOABB | training time (s) | 169.22427923076924 | EEGNet-8,2 |
| ERP | Sosulski2019 MOABB | AUC-ROC | 86.17639538461539 | EEGNeX |
| ERP | Sosulski2019 MOABB | training time (s) | 292.10557615384613 | EEGNeX |
| ERP | Sosulski2019 MOABB | AUC-ROC | 86.07416710000001 | XDAWNCov + MDM |
| ERP | Sosulski2019 MOABB | CO2 Emission (g) | 0.013847520075 | XDAWNCov + MDM |
| ERP | Sosulski2019 MOABB | training time (s) | 2.812111245 | XDAWNCov + MDM |
| ERP | Sosulski2019 MOABB | AUC-ROC | 78.35273161538461 | ShallowConvNet |
| ERP | Sosulski2019 MOABB | training time (s) | 215.27583423076925 | ShallowConvNet |
| ERP | Sosulski2019 MOABB | AUC-ROC | 70.632222375 | ERPCov(svd_n=4) + MDM |
| ERP | Sosulski2019 MOABB | CO2 Emission (g) | 0.015362666562499998 | ERPCov(svd_n=4) + MDM |
| ERP | Sosulski2019 MOABB | training time (s) | 1.6276701575 | ERPCov(svd_n=4) + MDM |
| ERP | Sosulski2019 MOABB | AUC-ROC | 68.16548655 | ERPCov + MDM |
| ERP | Sosulski2019 MOABB | CO2 Emission (g) | 0.062550748675 | ERPCov + MDM |
| ERP | Sosulski2019 MOABB | training time (s) | 12.6986916875 | ERPCov + MDM |
| ERP | Sosulski2019 MOABB | AUC-ROC | 67.48655605 | XDAWN + LDA |
| ERP | Sosulski2019 MOABB | CO2 Emission (g) | 0.0360850438 | XDAWN + LDA |
| ERP | Sosulski2019 MOABB | training time (s) | 7.327161445 | XDAWN + LDA |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 83.0813024 | XDAWNCov + MDM |
| ERP | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0042846727000000005 | XDAWNCov + MDM |
| ERP | BNCI2015-003 MOABB | training time (s) | 0.872752316 | XDAWNCov + MDM |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 82.9463175 | XDAWNCov + TS + SVM |
| ERP | BNCI2015-003 MOABB | CO2 Emission (g) | 0.02330993935 | XDAWNCov + TS + SVM |
| ERP | BNCI2015-003 MOABB | training time (s) | 4.73371116 | XDAWNCov + TS + SVM |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 81.8696517 | EEGITNet |
| ERP | BNCI2015-003 MOABB | training time (s) | 31.673819200000004 | EEGITNet |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 81.1056664 | EEGNet-8,2 |
| ERP | BNCI2015-003 MOABB | training time (s) | 21.2605219 | EEGNet-8,2 |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 78.6240163 | XDAWN + LDA |
| ERP | BNCI2015-003 MOABB | CO2 Emission (g) | 0.00903317618 | XDAWN + LDA |
| ERP | BNCI2015-003 MOABB | training time (s) | 1.74386197 | XDAWN + LDA |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 77.73544530000001 | EEGNeX |
| ERP | BNCI2015-003 MOABB | training time (s) | 27.2078305 | EEGNeX |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 76.9320484 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2015-003 MOABB | CO2 Emission (g) | 0.0047693783 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2015-003 MOABB | training time (s) | 0.5074777229999999 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 76.7858569 | ERPCov + MDM |
| ERP | BNCI2015-003 MOABB | CO2 Emission (g) | 0.007065287250000001 | ERPCov + MDM |
| ERP | BNCI2015-003 MOABB | training time (s) | 1.437615323 | ERPCov + MDM |
| ERP | BNCI2015-003 MOABB | AUC-ROC | 64.19801570000001 | ShallowConvNet |
| ERP | BNCI2015-003 MOABB | training time (s) | 24.1188684 | ShallowConvNet |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 85.99520425 | EEGITNet |
| ERP | BNCI2014-008 MOABB | training time (s) | 48.9808785 | EEGITNet |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 85.91137825 | EEGNet-8,2 |
| ERP | BNCI2014-008 MOABB | training time (s) | 31.55059125 | EEGNet-8,2 |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 85.609029625 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-008 MOABB | CO2 Emission (g) | 0.035406213775 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-008 MOABB | training time (s) | 8.160695075 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 83.856046375 | EEGNeX |
| ERP | BNCI2014-008 MOABB | training time (s) | 47.301771625 | EEGNeX |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 82.244593125 | XDAWN + LDA |
| ERP | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0257013525 | XDAWN + LDA |
| ERP | BNCI2014-008 MOABB | training time (s) | 5.2152112625000004 | XDAWN + LDA |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 81.07391687500001 | ShallowConvNet |
| ERP | BNCI2014-008 MOABB | training time (s) | 27.2347555 | ShallowConvNet |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 77.619541 | XDAWNCov + MDM |
| ERP | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0075848861750000005 | XDAWNCov + MDM |
| ERP | BNCI2014-008 MOABB | training time (s) | 1.5414688625 | XDAWNCov + MDM |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 75.424771125 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-008 MOABB | CO2 Emission (g) | 0.009542170825 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-008 MOABB | training time (s) | 1.014923625 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-008 MOABB | AUC-ROC | 74.298471 | ERPCov + MDM |
| ERP | BNCI2014-008 MOABB | CO2 Emission (g) | 0.0120071045 | ERPCov + MDM |
| ERP | BNCI2014-008 MOABB | training time (s) | 2.4383516875 | ERPCov + MDM |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 90.677777575 | XDAWNCov + TS + SVM |
| ERP | Cattan2019-VR MOABB | CO2 Emission (g) | 0.008065587075 | XDAWNCov + TS + SVM |
| ERP | Cattan2019-VR MOABB | training time (s) | 0.85638401025 | XDAWNCov + TS + SVM |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 89.4212960952381 | EEGITNet |
| ERP | Cattan2019-VR MOABB | training time (s) | 22.83087557142857 | EEGITNet |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 89.3339950952381 | EEGNeX |
| ERP | Cattan2019-VR MOABB | training time (s) | 23.31658614285714 | EEGNeX |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 88.529687375 | XDAWNCov + MDM |
| ERP | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0017226343375000002 | XDAWNCov + MDM |
| ERP | Cattan2019-VR MOABB | training time (s) | 0.18693414675 | XDAWNCov + MDM |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 86.3244051904762 | EEGNet-8,2 |
| ERP | Cattan2019-VR MOABB | training time (s) | 15.87339438095238 | EEGNet-8,2 |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 80.757379 | ERPCov + MDM |
| ERP | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0067425482250000005 | ERPCov + MDM |
| ERP | Cattan2019-VR MOABB | training time (s) | 0.7168895120000001 | ERPCov + MDM |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 80.674825575 | ERPCov(svd_n=4) + MDM |
| ERP | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0027964518625 | ERPCov(svd_n=4) + MDM |
| ERP | Cattan2019-VR MOABB | training time (s) | 0.30020958225 | ERPCov(svd_n=4) + MDM |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 80.03306880952381 | ShallowConvNet |
| ERP | Cattan2019-VR MOABB | training time (s) | 13.902749985714287 | ShallowConvNet |
| ERP | Cattan2019-VR MOABB | AUC-ROC | 67.159201475 | XDAWN + LDA |
| ERP | Cattan2019-VR MOABB | CO2 Emission (g) | 0.0033990314475 | XDAWN + LDA |
| ERP | Cattan2019-VR MOABB | training time (s) | 0.3639022155 | XDAWN + LDA |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 93.05381111627908 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.010436311162015504 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015a MOABB | training time (s) | 2.1127921527131783 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 92.56596253488371 | XDAWNCov + MDM |
| ERP | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0024371379224806203 | XDAWNCov + MDM |
| ERP | BrainInvaders2015a MOABB | training time (s) | 0.4988526374418605 | XDAWNCov + MDM |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 90.70906591472868 | EEGITNet |
| ERP | BrainInvaders2015a MOABB | training time (s) | 19.85593708914729 | EEGITNet |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 87.61770750387598 | EEGNeX |
| ERP | BrainInvaders2015a MOABB | training time (s) | 199.32986724031008 | EEGNeX |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 86.79717793023256 | EEGNet-8,2 |
| ERP | BrainInvaders2015a MOABB | training time (s) | 14.414908054263565 | EEGNet-8,2 |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 80.01716807751939 | ERPCov + MDM |
| ERP | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.019448981011627904 | ERPCov + MDM |
| ERP | BrainInvaders2015a MOABB | training time (s) | 3.9502074596899224 | ERPCov + MDM |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 77.92098565891473 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0052664793930232556 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015a MOABB | training time (s) | 0.560524827751938 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 76.01550499224807 | XDAWN + LDA |
| ERP | BrainInvaders2015a MOABB | CO2 Emission (g) | 0.0039047394186046513 | XDAWN + LDA |
| ERP | BrainInvaders2015a MOABB | training time (s) | 0.7962977278294574 | XDAWN + LDA |
| ERP | BrainInvaders2015a MOABB | AUC-ROC | 59.55947582945736 | ShallowConvNet |
| ERP | BrainInvaders2015a MOABB | training time (s) | 15.322640255813955 | ShallowConvNet |
| ERP | Huebner2018 MOABB | AUC-ROC | 98.46594386111111 | XDAWNCov + TS + SVM |
| ERP | Huebner2018 MOABB | CO2 Emission (g) | 0.07899148369444445 | XDAWNCov + TS + SVM |
| ERP | Huebner2018 MOABB | training time (s) | 9.940868125 | XDAWNCov + TS + SVM |
| ERP | Huebner2018 MOABB | AUC-ROC | 98.17509305555555 | EEGNet-8,2 |
| ERP | Huebner2018 MOABB | training time (s) | 78.75188250000001 | EEGNet-8,2 |
| ERP | Huebner2018 MOABB | AUC-ROC | 97.78393108333331 | XDAWNCov + MDM |
| ERP | Huebner2018 MOABB | CO2 Emission (g) | 0.02470122563888889 | XDAWNCov + MDM |
| ERP | Huebner2018 MOABB | training time (s) | 5.015010133333333 | XDAWNCov + MDM |
| ERP | Huebner2018 MOABB | AUC-ROC | 97.53628586111111 | XDAWN + LDA |
| ERP | Huebner2018 MOABB | CO2 Emission (g) | 0.16110926027777778 | XDAWN + LDA |
| ERP | Huebner2018 MOABB | training time (s) | 32.70688272222222 | XDAWN + LDA |
| ERP | Huebner2018 MOABB | AUC-ROC | 96.608676 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2018 MOABB | CO2 Emission (g) | 0.03743309013888889 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2018 MOABB | training time (s) | 3.9697683444444447 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2018 MOABB | AUC-ROC | 95.14819502777779 | ERPCov + MDM |
| ERP | Huebner2018 MOABB | CO2 Emission (g) | 0.1544211313888889 | ERPCov + MDM |
| ERP | Huebner2018 MOABB | training time (s) | 31.349976444444444 | ERPCov + MDM |
| ERP | Huebner2018 MOABB | AUC-ROC | 89.71045811111111 | ShallowConvNet |
| ERP | Huebner2018 MOABB | training time (s) | 1587.3318289166666 | ShallowConvNet |
| ERP | Huebner2018 MOABB | AUC-ROC | 87.6017086111111 | EEGITNet |
| ERP | Huebner2018 MOABB | training time (s) | 2489.9952416666665 | EEGITNet |
| ERP | Huebner2018 MOABB | AUC-ROC | 76.54384258333333 | EEGNeX |
| ERP | Huebner2018 MOABB | training time (s) | 4893.720471111111 | EEGNeX |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 90.98646704 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007038169084 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2012 MOABB | training time (s) | 1.4309155479999998 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 89.64630072 | EEGITNet |
| ERP | BrainInvaders2012 MOABB | training time (s) | 19.83932564 | EEGITNet |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 88.21925356 | XDAWNCov + MDM |
| ERP | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.001676014172 | XDAWNCov + MDM |
| ERP | BrainInvaders2012 MOABB | training time (s) | 0.3440682904 | XDAWNCov + MDM |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 88.21605579999999 | EEGNeX |
| ERP | BrainInvaders2012 MOABB | training time (s) | 43.42852808000001 | EEGNeX |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 87.1327338 | EEGNet-8,2 |
| ERP | BrainInvaders2012 MOABB | training time (s) | 16.79750712 | EEGNet-8,2 |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 79.01510372 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.003451275416 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2012 MOABB | training time (s) | 0.3691924696 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 78.76657744 | ERPCov + MDM |
| ERP | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.007749152372 | ERPCov + MDM |
| ERP | BrainInvaders2012 MOABB | training time (s) | 1.5751372879999999 | ERPCov + MDM |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 77.06215808 | ShallowConvNet |
| ERP | BrainInvaders2012 MOABB | training time (s) | 12.831535652 | ShallowConvNet |
| ERP | BrainInvaders2012 MOABB | AUC-ROC | 64.411995 | XDAWN + LDA |
| ERP | BrainInvaders2012 MOABB | CO2 Emission (g) | 0.002132688384 | XDAWN + LDA |
| ERP | BrainInvaders2012 MOABB | training time (s) | 0.4368925492 | XDAWN + LDA |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 98.40814827777777 | XDAWNCov + TS + SVM |
| ERP | Lee2019-ERP MOABB | CO2 Emission (g) | 0.17517531703703704 | XDAWNCov + TS + SVM |
| ERP | Lee2019-ERP MOABB | training time (s) | 18.539845689814815 | XDAWNCov + TS + SVM |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 97.85841548148149 | EEGNet-8,2 |
| ERP | Lee2019-ERP MOABB | training time (s) | 109.5753095 | EEGNet-8,2 |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 97.70259957407407 | XDAWNCov + MDM |
| ERP | Lee2019-ERP MOABB | CO2 Emission (g) | 0.04369601411111111 | XDAWNCov + MDM |
| ERP | Lee2019-ERP MOABB | training time (s) | 8.865101517592594 | XDAWNCov + MDM |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 96.81215804629629 | EEGITNet |
| ERP | Lee2019-ERP MOABB | training time (s) | 468.54065999999995 | EEGITNet |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 96.45206821296297 | XDAWN + LDA |
| ERP | Lee2019-ERP MOABB | CO2 Emission (g) | 0.13853210805555555 | XDAWN + LDA |
| ERP | Lee2019-ERP MOABB | training time (s) | 28.108453657407406 | XDAWN + LDA |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 82.47109035185186 | ERPCov(svd_n=4) + MDM |
| ERP | Lee2019-ERP MOABB | CO2 Emission (g) | 0.09060789349074073 | ERPCov(svd_n=4) + MDM |
| ERP | Lee2019-ERP MOABB | training time (s) | 9.584082125 | ERPCov(svd_n=4) + MDM |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 77.4085946574074 | ShallowConvNet |
| ERP | Lee2019-ERP MOABB | training time (s) | 4598.484442222222 | ShallowConvNet |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 74.43493880555556 | ERPCov + MDM |
| ERP | Lee2019-ERP MOABB | CO2 Emission (g) | 0.6299353016666667 | ERPCov + MDM |
| ERP | Lee2019-ERP MOABB | training time (s) | 127.87080321296297 | ERPCov + MDM |
| ERP | Lee2019-ERP MOABB | AUC-ROC | 70.27269508333333 | EEGNeX |
| ERP | Lee2019-ERP MOABB | training time (s) | 6374.80394962963 | EEGNeX |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 86.65828684375 | EEGITNet |
| ERP | BrainInvaders2014a MOABB | training time (s) | 22.878644265625 | EEGITNet |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 85.766639203125 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0118778180875 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014a MOABB | training time (s) | 2.4124490578125 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 85.082494609375 | EEGNeX |
| ERP | BrainInvaders2014a MOABB | training time (s) | 40.16552703125 | EEGNeX |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 82.089285546875 | EEGNet-8,2 |
| ERP | BrainInvaders2014a MOABB | training time (s) | 17.4438248203125 | EEGNet-8,2 |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 80.87908620312501 | XDAWNCov + MDM |
| ERP | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.002724634465625 | XDAWNCov + MDM |
| ERP | BrainInvaders2014a MOABB | training time (s) | 0.55664274078125 | XDAWNCov + MDM |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 72.112766 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0055548682296875 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014a MOABB | training time (s) | 0.593198109375 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 71.61664846875 | ERPCov + MDM |
| ERP | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.0108043912796875 | ERPCov + MDM |
| ERP | BrainInvaders2014a MOABB | training time (s) | 2.19471158046875 | ERPCov + MDM |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 66.600249390625 | XDAWN + LDA |
| ERP | BrainInvaders2014a MOABB | CO2 Emission (g) | 0.00539390185625 | XDAWN + LDA |
| ERP | BrainInvaders2014a MOABB | training time (s) | 1.09766276640625 | XDAWN + LDA |
| ERP | BrainInvaders2014a MOABB | AUC-ROC | 63.189278171874996 | ShallowConvNet |
| ERP | BrainInvaders2014a MOABB | training time (s) | 11.1103096703125 | ShallowConvNet |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 93.42633376666666 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0059379570460000005 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-009 MOABB | training time (s) | 1.2433190566666668 | XDAWNCov + TS + SVM |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 92.20581209999999 | EEGITNet |
| ERP | BNCI2014-009 MOABB | training time (s) | 14.687204666666666 | EEGITNet |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 92.0386331 | XDAWNCov + MDM |
| ERP | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00151833076 | XDAWNCov + MDM |
| ERP | BNCI2014-009 MOABB | training time (s) | 0.31271911366666666 | XDAWNCov + MDM |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 91.3685305 | EEGNet-8,2 |
| ERP | BNCI2014-009 MOABB | training time (s) | 11.758606149999999 | EEGNet-8,2 |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 90.57953203333334 | EEGNeX |
| ERP | BNCI2014-009 MOABB | training time (s) | 14.724422183333333 | EEGNeX |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 85.12375750000001 | ShallowConvNet |
| ERP | BNCI2014-009 MOABB | training time (s) | 10.642818243333332 | ShallowConvNet |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 84.51730606666668 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-009 MOABB | CO2 Emission (g) | 0.0025560880933333334 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-009 MOABB | training time (s) | 0.27403514700000003 | ERPCov(svd_n=4) + MDM |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 81.155062 | ERPCov + MDM |
| ERP | BNCI2014-009 MOABB | CO2 Emission (g) | 0.00581838295 | ERPCov + MDM |
| ERP | BNCI2014-009 MOABB | training time (s) | 1.1838480853333333 | ERPCov + MDM |
| ERP | BNCI2014-009 MOABB | AUC-ROC | 64.0324565 | XDAWN + LDA |
| ERP | BNCI2014-009 MOABB | CO2 Emission (g) | 0.001991239006666667 | XDAWN + LDA |
| ERP | BNCI2014-009 MOABB | training time (s) | 0.4082341586666667 | XDAWN + LDA |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 84.55596702272726 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.043256562954545455 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015b MOABB | training time (s) | 8.7821148 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 83.47637268181818 | XDAWNCov + MDM |
| ERP | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.009540853547727273 | XDAWNCov + MDM |
| ERP | BrainInvaders2015b MOABB | training time (s) | 1.9377388022727273 | XDAWNCov + MDM |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 83.33420745454546 | EEGITNet |
| ERP | BrainInvaders2015b MOABB | training time (s) | 51.57266440909091 | EEGITNet |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 82.65727052272726 | EEGNet-8,2 |
| ERP | BrainInvaders2015b MOABB | training time (s) | 36.372572295454546 | EEGNet-8,2 |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 81.59775325 | EEGNeX |
| ERP | BrainInvaders2015b MOABB | training time (s) | 105.33800122727274 | EEGNeX |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 77.22383009090909 | XDAWN + LDA |
| ERP | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.03399095902272727 | XDAWN + LDA |
| ERP | BrainInvaders2015b MOABB | training time (s) | 6.902407668181818 | XDAWN + LDA |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 77.09262879545456 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.022060082954545455 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015b MOABB | training time (s) | 2.337742318181818 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 75.03742063636363 | ERPCov + MDM |
| ERP | BrainInvaders2015b MOABB | CO2 Emission (g) | 0.08719968354545454 | ERPCov + MDM |
| ERP | BrainInvaders2015b MOABB | training time (s) | 17.70060197727273 | ERPCov + MDM |
| ERP | BrainInvaders2015b MOABB | AUC-ROC | 73.19578579545454 | ShallowConvNet |
| ERP | BrainInvaders2015b MOABB | training time (s) | 50.65970795454545 | ShallowConvNet |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 92.71220376712328 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005985859813698631 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2013a MOABB | training time (s) | 1.2172368082191782 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 90.96501701369863 | XDAWNCov + MDM |
| ERP | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.001490637705479452 | XDAWNCov + MDM |
| ERP | BrainInvaders2013a MOABB | training time (s) | 0.30659427246575344 | XDAWNCov + MDM |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 90.01125384931507 | EEGITNet |
| ERP | BrainInvaders2013a MOABB | training time (s) | 16.593567684931507 | EEGITNet |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 88.61672143835617 | EEGNeX |
| ERP | BrainInvaders2013a MOABB | training time (s) | 25.649349828767125 | EEGNeX |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 85.40249767123287 | EEGNet-8,2 |
| ERP | BrainInvaders2013a MOABB | training time (s) | 13.898916060273972 | EEGNet-8,2 |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 82.06941052054795 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.002071112097260274 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2013a MOABB | training time (s) | 0.22355115438356163 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 80.58733515068494 | ERPCov + MDM |
| ERP | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.005112474912328768 | ERPCov + MDM |
| ERP | BrainInvaders2013a MOABB | training time (s) | 1.0407688483561643 | ERPCov + MDM |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 76.74075019178083 | XDAWN + LDA |
| ERP | BrainInvaders2013a MOABB | CO2 Emission (g) | 0.0024966474219178083 | XDAWN + LDA |
| ERP | BrainInvaders2013a MOABB | training time (s) | 0.5100849124657535 | XDAWN + LDA |
| ERP | BrainInvaders2013a MOABB | AUC-ROC | 74.50491942465753 | ShallowConvNet |
| ERP | BrainInvaders2013a MOABB | training time (s) | 9.185006005479453 | ShallowConvNet |
| ERP | Huebner2017 MOABB | AUC-ROC | 98.68678031578948 | XDAWNCov + TS + SVM |
| ERP | Huebner2017 MOABB | CO2 Emission (g) | 0.06488028365789474 | XDAWNCov + TS + SVM |
| ERP | Huebner2017 MOABB | training time (s) | 10.07638602631579 | XDAWNCov + TS + SVM |
| ERP | Huebner2017 MOABB | AUC-ROC | 98.28146008108108 | EEGNet-8,2 |
| ERP | Huebner2017 MOABB | training time (s) | 73.38250045945946 | EEGNet-8,2 |
| ERP | Huebner2017 MOABB | AUC-ROC | 98.07393668421052 | XDAWNCov + MDM |
| ERP | Huebner2017 MOABB | CO2 Emission (g) | 0.02386866539473684 | XDAWNCov + MDM |
| ERP | Huebner2017 MOABB | training time (s) | 4.846665142105263 | XDAWNCov + MDM |
| ERP | Huebner2017 MOABB | AUC-ROC | 97.74267144736841 | XDAWN + LDA |
| ERP | Huebner2017 MOABB | CO2 Emission (g) | 0.12781473060526316 | XDAWN + LDA |
| ERP | Huebner2017 MOABB | training time (s) | 25.946418210526314 | XDAWN + LDA |
| ERP | Huebner2017 MOABB | AUC-ROC | 96.20552692105264 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2017 MOABB | CO2 Emission (g) | 0.03857930394736842 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2017 MOABB | training time (s) | 4.081931507894737 | ERPCov(svd_n=4) + MDM |
| ERP | Huebner2017 MOABB | AUC-ROC | 95.78304654054055 | EEGITNet |
| ERP | Huebner2017 MOABB | training time (s) | 675.4294938108109 | EEGITNet |
| ERP | Huebner2017 MOABB | AUC-ROC | 94.469262 | ERPCov + MDM |
| ERP | Huebner2017 MOABB | CO2 Emission (g) | 0.13750907568421053 | ERPCov + MDM |
| ERP | Huebner2017 MOABB | training time (s) | 27.91168176315789 | ERPCov + MDM |
| ERP | Huebner2017 MOABB | AUC-ROC | 90.959699 | ShallowConvNet |
| ERP | Huebner2017 MOABB | training time (s) | 1543.135988162162 | ShallowConvNet |
| ERP | Huebner2017 MOABB | AUC-ROC | 79.73031656756756 | EEGNeX |
| ERP | Huebner2017 MOABB | training time (s) | 4185.744198918919 | EEGNeX |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 91.88114464864864 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.004579043135135135 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014b MOABB | training time (s) | 0.932672401891892 | XDAWNCov + TS + SVM |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 91.58241135135135 | XDAWNCov + MDM |
| ERP | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0011774970894594596 | XDAWNCov + MDM |
| ERP | BrainInvaders2014b MOABB | training time (s) | 0.2431399435135135 | XDAWNCov + MDM |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 86.26866734210526 | EEGITNet |
| ERP | BrainInvaders2014b MOABB | training time (s) | 15.856247092105264 | EEGITNet |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 83.87045207894737 | EEGNeX |
| ERP | BrainInvaders2014b MOABB | training time (s) | 18.323774763157896 | EEGNeX |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 83.72681281081081 | XDAWN + LDA |
| ERP | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.0021593195945945947 | XDAWN + LDA |
| ERP | BrainInvaders2014b MOABB | training time (s) | 0.44246931054054056 | XDAWN + LDA |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 80.14453618421052 | EEGNet-8,2 |
| ERP | BrainInvaders2014b MOABB | training time (s) | 11.691945342105264 | EEGNet-8,2 |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 78.56550172972973 | ERPCov + MDM |
| ERP | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.008591208308108108 | ERPCov + MDM |
| ERP | BrainInvaders2014b MOABB | training time (s) | 1.7454204 | ERPCov + MDM |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 76.47954105405405 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014b MOABB | CO2 Emission (g) | 0.002490634086486486 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014b MOABB | training time (s) | 0.2674589289189189 | ERPCov(svd_n=4) + MDM |
| ERP | BrainInvaders2014b MOABB | AUC-ROC | 63.752483210526314 | ShallowConvNet |
| ERP | BrainInvaders2014b MOABB | training time (s) | 8.105964836842105 | ShallowConvNet |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 99.19753077777779 | TRCA |
| SSVEP | Nakanishi2015 MOABB | CO2 Emission (g) | 0.04248703377777777 | TRCA |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 5.9494875333333335 | TRCA |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 92.53086377777778 | CCA |
| SSVEP | Nakanishi2015 MOABB | CO2 Emission (g) | 0.007113911222222223 | CCA |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 0.9963089366666666 | CCA |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 87.22222211111111 | SSVEP_TS + LR |
| SSVEP | Nakanishi2015 MOABB | CO2 Emission (g) | 0.08959895766666666 | SSVEP_TS + LR |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 4.598894566666667 | SSVEP_TS + LR |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 86.29629577777777 | SSVEP_TS + SVM |
| SSVEP | Nakanishi2015 MOABB | CO2 Emission (g) | 0.07978009122222222 | SSVEP_TS + SVM |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 4.098129833333334 | SSVEP_TS + SVM |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 82.65431844444444 | EEGNeX |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 35.36092722222222 | EEGNeX |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 80.86419722222222 | EEGITNet |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 8.040663722222222 | EEGITNet |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 78.76543211111111 | SSVEP_MDM |
| SSVEP | Nakanishi2015 MOABB | CO2 Emission (g) | 0.10513940711111111 | SSVEP_MDM |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 5.3561836 | SSVEP_MDM |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 57.469136 | ShallowConvNet |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 6.811167988888889 | ShallowConvNet |
| SSVEP | Nakanishi2015 MOABB | Accuracy | 44.135803 | EEGNet-8,2 |
| SSVEP | Nakanishi2015 MOABB | training time (s) | 4.711782822222222 | EEGNet-8,2 |
| SSVEP | MAMEM3 MOABB | Accuracy | 42.1 | SSVEP_TS + LR |
| SSVEP | MAMEM3 MOABB | CO2 Emission (g) | 0.026997567 | SSVEP_TS + LR |
| SSVEP | MAMEM3 MOABB | training time (s) | 1.46499837 | SSVEP_TS + LR |
| SSVEP | MAMEM3 MOABB | Accuracy | 40.199999999999996 | SSVEP_TS + SVM |
| SSVEP | MAMEM3 MOABB | CO2 Emission (g) | 0.0252171588 | SSVEP_TS + SVM |
| SSVEP | MAMEM3 MOABB | training time (s) | 1.36490621 | SSVEP_TS + SVM |
| SSVEP | MAMEM3 MOABB | Accuracy | 34.4 | SSVEP_MDM |
| SSVEP | MAMEM3 MOABB | CO2 Emission (g) | 0.028922213000000002 | SSVEP_MDM |
| SSVEP | MAMEM3 MOABB | training time (s) | 1.56297961 | SSVEP_MDM |
| SSVEP | MAMEM3 MOABB | Accuracy | 33.1 | ShallowConvNet |
| SSVEP | MAMEM3 MOABB | training time (s) | 5.90452088 | ShallowConvNet |
| SSVEP | MAMEM3 MOABB | Accuracy | 27.500000000000004 | EEGNet-8,2 |
| SSVEP | MAMEM3 MOABB | training time (s) | 5.74253287 | EEGNet-8,2 |
| SSVEP | MAMEM3 MOABB | Accuracy | 27.1 | TRCA |
| SSVEP | MAMEM3 MOABB | CO2 Emission (g) | 0.0317322511 | TRCA |
| SSVEP | MAMEM3 MOABB | training time (s) | 4.44355459 | TRCA |
| SSVEP | MAMEM3 MOABB | Accuracy | 25 | EEGITNet |
| SSVEP | MAMEM3 MOABB | training time (s) | 6.796000050000001 | EEGITNet |
| SSVEP | MAMEM3 MOABB | Accuracy | 24.8 | EEGNeX |
| SSVEP | MAMEM3 MOABB | training time (s) | 22.5295867 | EEGNeX |
| SSVEP | MAMEM3 MOABB | Accuracy | 22.800000000000004 | CCA |
| SSVEP | MAMEM3 MOABB | CO2 Emission (g) | 0.00131271061 | CCA |
| SSVEP | MAMEM3 MOABB | training time (s) | 0.183953595 | CCA |
| SSVEP | MAMEM2 MOABB | Accuracy | 39.36 | SSVEP_TS + LR |
| SSVEP | MAMEM2 MOABB | CO2 Emission (g) | 17.0932925 | SSVEP_TS + LR |
| SSVEP | MAMEM2 MOABB | training time (s) | 840.129991 | SSVEP_TS + LR |
| SSVEP | MAMEM2 MOABB | Accuracy | 34.8 | SSVEP_TS + SVM |
| SSVEP | MAMEM2 MOABB | CO2 Emission (g) | 16.319102700000002 | SSVEP_TS + SVM |
| SSVEP | MAMEM2 MOABB | training time (s) | 791.885326 | SSVEP_TS + SVM |
| SSVEP | MAMEM2 MOABB | Accuracy | 26.32 | EEGNeX |
| SSVEP | MAMEM2 MOABB | training time (s) | 180.9718512 | EEGNeX |
| SSVEP | MAMEM2 MOABB | Accuracy | 25.840000000000003 | ShallowConvNet |
| SSVEP | MAMEM2 MOABB | training time (s) | 1620.974344 | ShallowConvNet |
| SSVEP | MAMEM2 MOABB | Accuracy | 24.56 | EEGNet-8,2 |
| SSVEP | MAMEM2 MOABB | training time (s) | 26.034414199999997 | EEGNet-8,2 |
| SSVEP | MAMEM2 MOABB | Accuracy | 23.12 | SSVEP_MDM |
| SSVEP | MAMEM2 MOABB | CO2 Emission (g) | 21.4845976 | SSVEP_MDM |
| SSVEP | MAMEM2 MOABB | training time (s) | 1028.1009 | SSVEP_MDM |
| SSVEP | MAMEM2 MOABB | Accuracy | 22.72 | EEGITNet |
| SSVEP | MAMEM2 MOABB | training time (s) | 34.195504299999996 | EEGITNet |
| SSVEP | MAMEM2 MOABB | Accuracy | 22.64 | TRCA |
| SSVEP | MAMEM2 MOABB | CO2 Emission (g) | 2.85556727 | TRCA |
| SSVEP | MAMEM2 MOABB | training time (s) | 399.849453 | TRCA |
| SSVEP | MAMEM2 MOABB | Accuracy | 20.64 | CCA |
| SSVEP | MAMEM2 MOABB | CO2 Emission (g) | 0.10534236079999999 | CCA |
| SSVEP | MAMEM2 MOABB | training time (s) | 14.7508205 | CCA |
| SSVEP | MAMEM1 MOABB | Accuracy | 67.1084639 | EEGNeX |
| SSVEP | MAMEM1 MOABB | training time (s) | 197.02376239999998 | EEGNeX |
| SSVEP | MAMEM1 MOABB | Accuracy | 58.0691632 | EEGITNet |
| SSVEP | MAMEM1 MOABB | training time (s) | 39.6391611 | EEGITNet |
| SSVEP | MAMEM1 MOABB | Accuracy | 54.5442871 | TRCA |
| SSVEP | MAMEM1 MOABB | CO2 Emission (g) | 1.785962026 | TRCA |
| SSVEP | MAMEM1 MOABB | training time (s) | 250.07919099999998 | TRCA |
| SSVEP | MAMEM1 MOABB | Accuracy | 53.70517730000001 | SSVEP_TS + LR |
| SSVEP | MAMEM1 MOABB | CO2 Emission (g) | 13.59719356 | SSVEP_TS + LR |
| SSVEP | MAMEM1 MOABB | training time (s) | 698.7826769999999 | SSVEP_TS + LR |
| SSVEP | MAMEM1 MOABB | Accuracy | 50.57987980000001 | SSVEP_TS + SVM |
| SSVEP | MAMEM1 MOABB | CO2 Emission (g) | 12.962970100000001 | SSVEP_TS + SVM |
| SSVEP | MAMEM1 MOABB | training time (s) | 657.646162 | SSVEP_TS + SVM |
| SSVEP | MAMEM1 MOABB | Accuracy | 43.029499 | EEGNet-8,2 |
| SSVEP | MAMEM1 MOABB | training time (s) | 23.1336158 | EEGNet-8,2 |
| SSVEP | MAMEM1 MOABB | Accuracy | 36.03516260000001 | ShallowConvNet |
| SSVEP | MAMEM1 MOABB | training time (s) | 3920.421198 | ShallowConvNet |
| SSVEP | MAMEM1 MOABB | Accuracy | 27.3128415 | SSVEP_MDM |
| SSVEP | MAMEM1 MOABB | CO2 Emission (g) | 16.1321347 | SSVEP_MDM |
| SSVEP | MAMEM1 MOABB | training time (s) | 824.9421399999999 | SSVEP_MDM |
| SSVEP | MAMEM1 MOABB | Accuracy | 21.7420669 | CCA |
| SSVEP | MAMEM1 MOABB | CO2 Emission (g) | 0.0819434059 | CCA |
| SSVEP | MAMEM1 MOABB | training time (s) | 11.47441585 | CCA |
| SSVEP | Wang2016 MOABB | Accuracy | 98.97058994117646 | TRCA |
| SSVEP | Wang2016 MOABB | CO2 Emission (g) | 0.35510938491176475 | TRCA |
| SSVEP | Wang2016 MOABB | training time (s) | 51.168803294117644 | TRCA |
| SSVEP | Wang2016 MOABB | Accuracy | 88.22303944117647 | CCA |
| SSVEP | Wang2016 MOABB | CO2 Emission (g) | 0.25679755529411763 | CCA |
| SSVEP | Wang2016 MOABB | training time (s) | 35.958232058823526 | CCA |
| SSVEP | Wang2016 MOABB | Accuracy | 67.52450958823529 | SSVEP_TS + LR |
| SSVEP | Wang2016 MOABB | CO2 Emission (g) | 0.014626497973529412 | SSVEP_TS + LR |
| SSVEP | Wang2016 MOABB | training time (s) | 23.87455808235294 | SSVEP_TS + LR |
| SSVEP | Wang2016 MOABB | Accuracy | 59.58333323529412 | SSVEP_TS + SVM |
| SSVEP | Wang2016 MOABB | CO2 Emission (g) | 0.016185734488235293 | SSVEP_TS + SVM |
| SSVEP | Wang2016 MOABB | training time (s) | 27.371970164705882 | SSVEP_TS + SVM |
| SSVEP | Wang2016 MOABB | Accuracy | 54.76715661764706 | SSVEP_MDM |
| SSVEP | Wang2016 MOABB | CO2 Emission (g) | 0.014037612047058824 | SSVEP_MDM |
| SSVEP | Wang2016 MOABB | training time (s) | 19.76784232352941 | SSVEP_MDM |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 97.77777777777777 | TRCA |
| SSVEP | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.25070370964814814 | TRCA |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 35.42286275 | TRCA |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 93.80555555555556 | EEGNeX |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 191.3021131111111 | EEGNeX |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 90.97222222222221 | CCA |
| SSVEP | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.010103892560185186 | CCA |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 1.415124501851852 | CCA |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 89.44444444444444 | SSVEP_TS + LR |
| SSVEP | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11153871532407408 | SSVEP_TS + LR |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 15.61881037037037 | SSVEP_TS + LR |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 88.58333333333334 | SSVEP_TS + SVM |
| SSVEP | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.10468667306481481 | SSVEP_TS + SVM |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 14.65914484722222 | SSVEP_TS + SVM |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 86.8425925925926 | EEGITNet |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 23.24565614351852 | EEGITNet |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 74.81818181818181 | SSVEP_MDM |
| SSVEP | Lee2019-SSVEP MOABB | CO2 Emission (g) | 0.11398800675324675 | SSVEP_MDM |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 15.961555350649352 | SSVEP_MDM |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 69.3611111111111 | ShallowConvNet |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 33.26947674074074 | ShallowConvNet |
| SSVEP | Lee2019-SSVEP MOABB | Accuracy | 64.42592592592592 | EEGNet-8,2 |
| SSVEP | Lee2019-SSVEP MOABB | training time (s) | 13.879997119444445 | EEGNet-8,2 |
| SSVEP | Kalunga2016 MOABB | Accuracy | 70.89385925 | SSVEP_MDM |
| SSVEP | Kalunga2016 MOABB | CO2 Emission (g) | 0.002602688875 | SSVEP_MDM |
| SSVEP | Kalunga2016 MOABB | training time (s) | 0.16333881583333335 | SSVEP_MDM |
| SSVEP | Kalunga2016 MOABB | Accuracy | 70.86472991666666 | SSVEP_TS + LR |
| SSVEP | Kalunga2016 MOABB | CO2 Emission (g) | 0.0021011706583333335 | SSVEP_TS + LR |
| SSVEP | Kalunga2016 MOABB | training time (s) | 0.13897842158333332 | SSVEP_TS + LR |
| SSVEP | Kalunga2016 MOABB | Accuracy | 68.94949916666667 | SSVEP_TS + SVM |
| SSVEP | Kalunga2016 MOABB | CO2 Emission (g) | 0.0022165178750000003 | SSVEP_TS + SVM |
| SSVEP | Kalunga2016 MOABB | training time (s) | 0.130249698 | SSVEP_TS + SVM |
| SSVEP | Kalunga2016 MOABB | Accuracy | 54.420178166666666 | ShallowConvNet |
| SSVEP | Kalunga2016 MOABB | training time (s) | 6.559657266666666 | ShallowConvNet |
| SSVEP | Kalunga2016 MOABB | Accuracy | 43.5187945 | EEGNet-8,2 |
| SSVEP | Kalunga2016 MOABB | training time (s) | 7.561273683333333 | EEGNet-8,2 |
| SSVEP | Kalunga2016 MOABB | Accuracy | 34.20391266666667 | TRCA |
| SSVEP | Kalunga2016 MOABB | CO2 Emission (g) | 0.0019902593416666666 | TRCA |
| SSVEP | Kalunga2016 MOABB | training time (s) | 0.27882464583333333 | TRCA |
| SSVEP | Kalunga2016 MOABB | Accuracy | 33.87684483333333 | CCA |
| SSVEP | Kalunga2016 MOABB | CO2 Emission (g) | 0.0005601459183333333 | CCA |
| SSVEP | Kalunga2016 MOABB | training time (s) | 0.07858161266666668 | CCA |
| SSVEP | Kalunga2016 MOABB | Accuracy | 31.35680125 | EEGNeX |
| SSVEP | Kalunga2016 MOABB | training time (s) | 10.771992875 | EEGNeX |
| SSVEP | Kalunga2016 MOABB | Accuracy | 24.79779866666667 | EEGITNet |
| SSVEP | Kalunga2016 MOABB | training time (s) | 6.9656671333333335 | EEGITNet |