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Datasets/CAT

CAT

Context Adjustment Training

ImagesIntroduced 2021-08-04

CAT is a specialized dataset for co-saliency detection - one of the core tasks in the field of computer vision. This dataset is intended for both helping to assess the performance of vision algorithms and supporting research that aims to exploit large volumes of annotated data, e.g., for training deep neural networks. CAT consists of 33,500 images

Related Benchmarks

CAT 256x256/Image Generation/FIDCAT2000/Few-Shot Transfer Learning for Saliency Prediction/KLCAT2000/Saliency Detection/AUCCAT2000/Saliency Detection/KLCAT2000/Saliency Detection/NSSCAT2000/Saliency Prediction/KLCATER/Action Recognition/Average-mAPCATER/Activity Recognition/Average-mAPCATER/Atomic action recognition/Average-mAPCATER/Object Tracking/L1CATER/Object Tracking/Top 1 AccuracyCATER/Object Tracking/Top 5 AccuracyCATER/Video/L1CATER/Video/Top 1 AccuracyCATER/Video/Top 5 AccuracyCATH 4.2/Protein Design/PerplexityCATH 4.2/Protein Design/Sequence Recovery %(All)CATH 4.3/Protein Design/PerplexityCATH 4.3/Protein Design/Sequence Recovery %(All)CATT/Arabic Text Diacritization/DER(%)CATT/Arabic Text Diacritization/WER (%)CatFLW/3D/NMECatFLW/3D Face Modelling/NMECatFLW/3D Face Reconstruction/NMECatFLW/Face Reconstruction/NMECatFLW/Facial Landmark Detection/NMECatFLW/Facial Recognition and Modelling/NMECatalan TimeBank 1.0/Information Extraction/F1Catalan TimeBank 1.0/Temporal Information Extraction/F1Catalan TimeBank 1.0/Temporal Processing/F1Cats and Dogs/Unsupervised Anomaly Detection with Specified Settings -- 0.1% anomaly/AUC-ROCCats and Dogs/Unsupervised Anomaly Detection with Specified Settings -- 1% anomaly/AUC-ROCCats and Dogs/Unsupervised Anomaly Detection with Specified Settings -- 10% anomaly/AUC-ROCCats and Dogs/Unsupervised Anomaly Detection with Specified Settings -- 20% anomaly/AUC-ROCCats-and-Dogs/1 Image, 2*2 Stitching/CISCats-and-Dogs/1 Image, 2*2 Stitching/ISCats-and-Dogs/Anomaly Detection/ROC AUCCats-and-Dogs/Image Generation/CISCats-and-Dogs/Image Generation/ISCats-and-Dogs/Image-to-Image Translation/CISCats-and-Dogs/Image-to-Image Translation/ISCattan2019-VR MOABB/Brain Computer Interface/AUC-ROCCattan2019-VR MOABB/Brain Computer Interface/CO2 Emission (g)Cattan2019-VR MOABB/Brain Computer Interface/training time (s)Cattan2019-VR MOABB/Brain Decoding/AUC-ROCCattan2019-VR MOABB/Brain Decoding/CO2 Emission (g)Cattan2019-VR MOABB/Brain Decoding/training time (s)Cattan2019-VR MOABB/ERP/AUC-ROCCattan2019-VR MOABB/ERP/CO2 Emission (g)Cattan2019-VR MOABB/ERP/training time (s)cat2dog/1 Image, 2*2 Stitching/DFIDcat2dog/1 Image, 2*2 Stitching/FIDcat2dog/1 Image, 2*2 Stitching/Kernel Inception Distancecat2dog/Image Generation/DFIDcat2dog/Image Generation/FIDcat2dog/Image Generation/Kernel Inception Distancecat2dog/Image-to-Image Translation/DFIDcat2dog/Image-to-Image Translation/FIDcat2dog/Image-to-Image Translation/Kernel Inception DistancecatbAbI LM-mode/Question Answering/Accuracy (mean)catbAbI QA-mode/Question Answering/1:1 Accuracycats_vs_dogs/Image Classification/Accuracy

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Saliency Detection