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SotA/Robots/Autonomous Driving/Argoverse CVPR 2020

Autonomous Driving on Argoverse CVPR 2020

Metric: DAC (K=6) (higher is better)

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Results

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#Model↕DAC (K=6)▼Extra DataPaperDate↕Code
1lt_cont_k60.9931No---
2Holmes0.9927No---
3SEPT0.9922No---
4HTTP0.9922No---
5R-Pred0.992NoR-Pred: Two-Stage Motion Prediction Via Tube-Que...2022-11-16-
6ATTTHOM0.9913No---
7TO0.9912No---
8argo_test_18_5m_add_rotation_change_data_change_model_3_010.9912No---
9Anonymous12340.991No---
10HIKVISION-ADLab-hz0.9909No---
11chl(yiqi)0.9903No---
12LaneRCNN (IROS 2021)0.9903NoLaneRCNN: Distributed Representations for Graph-...2021-01-17-
13DCMS0.9902NoBootstrap Motion Forecasting With Self-Consisten...2022-04-12-
14Jack-M0.99No---
15GANet0.9899NoGANet: Goal Area Network for Motion Forecasting2022-09-20Code
16SceneTransformer0.9899No---
17Ameame0.9898No---
18FGNet_sub0.9898No---
19PRIME0.9898No---
20VI LaneIter0.9897No---
21LAformer0.9897No---
22Met0.9896No---
23FGNet0.9895No---
24ProIn_av10.9894No---
25ProphNet0.9893No---
26Wayformer0.9893NoWayformer: Motion Forecasting via Simple & Effic...2022-07-12Code
27TPCN++0.9893No---
28DSP0.9892No---
29cls_weight1.2-decoder5-use-last0.9892No---
30HiVT++0.9891No--Code
31Shangguan_IFS0.9891No---
32PRANK0.9891NoPRANK: motion Prediction based on RANKing2020-10-22-
33PRANK0.9891NoPRANK: motion Prediction based on RANKing2020-10-22-
34vilab0.9889No---
35Habitat-Web0.9889No---
36TNT - CoRL200.9889NoTNT: Target-driveN Trajectory Prediction2020-08-19Code
37m2a2_340.9888No---
38HiVT-1280.9888No--Code
39DIDI0.9888No---
40QCNet0.9887No--Code
41ATDSNet-v20.9887No---
42lstm0.9887No---
43Gnet0.9886No---
44xia0.9886No---
45DTNet(FDE)0.9886No---
46decoder-3-last0.9885No---
47LTP0.9884No---
48Hi_base0.9884No---
49TPCN0.9884NoTPCN: Temporal Point Cloud Networks for Motion F...2021-03-04-
50PAGA0.9883No---
51matrix_mugen0.9883No---
52cls-weight1-50.9883No---
53shernan_wu0.9882No---
54TSGN0.9881No---
55DuanZX0.9878No---
56FRM0.9878NoLeveraging Future Relationship Reasoning for Veh...2023-05-24-
57Tang Luqi0.9878No---
58MFT0.9877No---
59ToNet0.9877No---
60lagat_mm0.9877No---
61multipath++0.9876NoMultiPath++: Efficient Information Fusion and Tr...2021-11-29Code
62MR0.9876No---
63team_moe0.9876No---
64FFINet0.9875No---
65minFDE0.9875No---
66TNT_202208190.9875No---
67be_s2lossf_38460.9874No---
68EuclidNet-L0.9874No---
69vill0.9873No---
70ECARX-V10.9872No---
71Lotus0.9871No---
72parallel_tl_123_02240.987No---
73Alibaba-ADLab0.987No---
74Jean0.9868No---
75tp0.9868No---
76lt_tv_cont0.9866No---
77Holistic Transformer0.9865NoHolistic Transformer: A Joint Neural Network for...2022-06-17-
78JMT0.9865No---
79fs_test0.9865No---
80vectorgcn0.9864No---
81MacFormer0.9863NoTENET: Transformer Encoding Network for Effectiv...2022-06-30-
82mm_kk_parallel_distemb_910.9862No---
83Dcupqiu0.9859No---
84SenseTime_AP0.9857No---
85DF-RNN0.9856No---
86cxx0.9854No---
87Waypoint0.9852No---
88Array0.9851No---
89leon0.985No---
90Miss Rate0.985No---
91wo_longterm0.9849No---
92AutoBot-Ego0.9848No---
93somemethod0.9848No---
94lstm_v10.9847No---
95yiqi-fudan0.9846No---
96880.9846No---
97abac0.9845No---
98SSL-Lanes0.9844NoSSL-Lanes: Self-Supervised Learning for Motion F...2022-06-28Code
99CU-aware LaneGCN0.9843No---
100Parallel x-transformers version1.10.9842No---
101mmTransformer0.9842No---
102zhanzhenxueyuan0.9842No---
103brier360.984No---
104Tang Luqi0.984No---
1051mode-groupEmbed-1060000.9839No---
106whr_test0.9838No---
107Model00.9838No---
108FTGN0.9837NoTrajectory Forecasting on Temporal Graphs2022-07-01Code
109daiyongjie0.9836No---
110YuNi0.9836No---
111watson0.9836No---
112CY_ng0.9836No---
113cbc0.9836No---
114julie-10.9836No---
115ywyeh0.9836No---
116hitchhiker0.9836No---
117alfred0.9836No---
118hitljx_test_sub0.9836No---
119chailiang0.9836No---
120zhousihong0.9836No---
121TrajectoryOracle0.9836No---
122l_DGA_lg0.9835No---
123ussm v2-SAIPS0.9835No---
124scale40.9834No---
125mymodel7_actornet_2_mapnet_a2m_a2a_2220.9834No---
1261mode-groupEmbed-1600000.9834No---
127MSPre0.9833No---
128HGO (K=6)0.9833No---
129dis1025000.9833No---
130numberEight0.9831No---
131fyyyy0.9831No---
132HOME + GOHOME0.983NoHOME: Heatmap Output for future Motion Estimation2021-05-23Code
133rush0.983No---
134prediction-liangdian0.9829No---
135mmppgg0.9829No---
136vi_avp0.9827No---
137sihong0.9826No---
138CMAN(av1_demo)0.9826No---
139JAL-MTP0.9825No---
140leige0.9825No---
141lanegcn_12_epoch0.9824No---
142Transformer10.982No---
14315 train 40e0.9818No---
144ORIGINAL0.9818No---
145Tang Luqi0.9818No---
146just_a_test0.9817No---
147SCP0.9816No---
148pred0.9816No---
149idlaber-Hans0.9815No---
150MTN0.9815No---
151wimp0.9815No---
152tnt-mtp_100s_targetloss_1-1_60.9815No---
153LaneGCN-trainset-360.9814No---
154Europa0.9814No---
155player0.9814No---
156lengyue0.9812No---
157LaneGCN0.9812No---
158chant0.9812No---
159SCP0.9812No---
160GOHOME0.9811NoGOHOME: Graph-Oriented Heatmap Output for future...2021-09-04-
161s10.981No---
162TestForecast0.9808No---
163MultiLine0.9808No---
164(VI)0.9807No---
165TPA+Laneloss0.9807No---
166huyuening0.9805No---
167ISY@TK0.9805No---
168LGN0.98No---
169damplyv10.98No---
170cul20.98No---
171sample_replace_gt_smalln_820.9799No---
172gcu_v20.9799No---
173SCM+Distill(best model)0.9797No---
174William0.9793No---
175mt_navi0.979No---
176THOMAS0.9781NoTHOMAS: Trajectory Heatmap Output with learned M...2021-10-13-
177LaneGCN-s0.9776No---
178NCTU-GPL-GPAL0.9776No---
179huangmozhi95270.9769No---
180fyyclass0.9762No---
1816 mode model0.9762No---
182tjxu0.9759No---
183huhu0.9758No---
184UAR0.9756No---
185ulimit0.9756No---
186huangmozhi0.9743No---
187wangwentong0.9742No---
188phuang0.9738No---
189DGA_lg0.973No---
190uulm-mrm0.9725No---
191vector-net-latest0.9725No---
192Tim0.9718No---
193tmtkinu0.97No---
194Map Static+Specific0.9699No---
195raster_v20.9691No---
196TangBug0.9671No---
197Gilgamesh0.9671No---
198Anchor0.9656No---
199NCTU-BNN0.964No---
200SHM0.9637No---
201mtz0.9623No---
202xjh0.9602No---
203El Camino0.9588No---
204adl0.9584No---
205hale0.958No---
206Fong0.9578No---
207BNet-2S0.9568No---
208lixin0.9567No---
209arky0.9563No---
210CRAT-Pred0.9558NoCRAT-Pred: Vehicle Trajectory Prediction with Cr...2022-02-09Code
211CoderTeam0.9521No---
212Extended-Social-LSTM0.9518No---
213llh0.9514No---
214xmy0.9511No---
215cls-token-transfer208k0.951No---
216raster-to-svg-train(t70.5k-train120k)1e-4-2-bs5-39k0.9506No---
217Vi yulia 51 prob0.9495No---
218timtim0.9494No---
219Model Agnostic Meta Learning0.9485No---
220Social-CVAE0.947No---
221Alice_Bob0.946No---
22206260.9437No---
223Speculators0.9408No---
224msms0.9397No---
225Xiaogang0.9384No---
226Whatever0.937No---
227LSTMs0.9298No---
228miaomiao0.9268No---
229Challenge0.9263No---
230deleted_accout_because_of_submission_error0.9197No---
231par0.9192No---
232slf0.9187No---
233GoodMountain0.9185No---
234Multiple Trajectories0.9183No---
235ln0.9179No---
236grip0.9176No---
237fs0.916No---
238gg66660.9143No---
239Aaron Huang0.9139No---
240HYU_ACE0.9124No---
241baguette0.9118No---
242AttnLstmMultiMod_fix0.9105No---
243Lane_vae0.9092No---
244pph0.9044No---
245haomokeji0.9042No---
246ffffx0.9033No---
247zs0.8988No---
248lstm+cnn0.8983No---
249que_anr0.8982No---
250Funtastic_4casting0.8977No---
251Constant-V-Forecating(very very naive)0.8977No---
252DeepPrediction0.8977No---
253lllsssjQuery33108037804872914465_16780975932920.8977No---
254MT-PNC0.8977No---
255naive method test0.8977No---
256default0.8977No---
257efficent and adaptive0.8977No---
258Waldo0.8965No---
259multimodal0.8934No---
260zys0.89No---
261rishabh0.8893No---
262bartosz0.8892No---
263yellowtaxi0.8879No---
264Ruochen0.8878No---
265zlewe0.8857No---
266NCTU_3095120330.8857No---
267null0.8857No---
268baseline_argo_contant_vel_010.8857No---
269test_10.8857No---
270gogogo_zhigang0.8805No---
271xjh1999230.879No---
272randommm0.8726No---
273mmmddd0.8722No---
274HH0.8704No---
275vectornet0.8697No---
276RuSheng0.8697No---
277hell0.8688No---
278NCTU-heheEECS0.8676No---
279NN(map)0.8676No---
280NN0.8676No---
281Trial0.8654No---
282suu0.864No---
283haomo0.8592No---
284Online_CL0.8441No---
285DQS0.8366No---
286ewta0.8332No---
287D0.20.832No---
288GRU_CVAE0.7834No---
289BD0.7756No---
290posterior with best parameters0.7734No---
291Constant velocity map prior0.755No---
292xjtub090.7064No---
293WST0.7042No---
294BaseballBro0.4323No---
295lanegcn_pimp_curr_sgd0.4222No---
296cxl0.3525No---
297Johnny Hsieh0.2939No---
298tusiji121380.1816No---
299jwlhs1040.1475No---