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Trajectory Prediction with Latent Belief Energy-Based Model

About

Human trajectory prediction is critical for autonomous platforms like self-driving cars or social robots. We present a latent belief energy-based model (LB-EBM) for diverse human trajectory forecast. LB-EBM is a probabilistic model with cost function defined in the latent space to account for the movement history and social context. The low-dimensionality of the latent space and the high expressivity of the EBM make it easy for the model to capture the multimodality of pedestrian trajectory distributions. LB-EBM is learned from expert demonstrations (i.e., human trajectories) projected into the latent space. Sampling from or optimizing the learned LB-EBM yields a belief vector which is used to make a path plan, which then in turn helps to predict a long-range trajectory. The effectiveness of LB-EBM and the two-step approach are supported by strong empirical results. Our model is able to make accurate, multi-modal, and social compliant trajectory predictions and improves over prior state-of-the-arts performance on the Stanford Drone trajectory prediction benchmark by 10.9% and on the ETH-UCY benchmark by 27.6%.

Bo Pang, Tianyang Zhao, Xu Xie, Ying Nian Wu• 2021

Related benchmarks

TaskDatasetResultRank
Trajectory PredictionETH UCY (test)
ADE0.3
72
Trajectory PredictionETH-UCY--
69
Trajectory PredictionZARA1 v1.0 (test)
ADE0.2
58
Trajectory PredictionHotel ETH-UCY (test)
ADE0.13
58
Trajectory PredictionETH UCY Average (test)
ADE0.21
52
Future Trajectory PredictionSDD (Stanford Drone Dataset) (test)
ADE8.87
51
Pedestrian trajectory predictionZARA2 UCY scene ETH (test)
ADE0.15
46
Trajectory PredictionZARA2 (test)
ADE (4.8s)0.15
45
Trajectory PredictionUNIV ETH-UCY (test)
ADE0.27
44
Trajectory ForecastingStanford Drone Dataset
Average Displacement Error (ADE)8.87
35
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