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%.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Trajectory Prediction | ETH UCY (test) | ADE0.3 | 65 | |
| Trajectory Prediction | ZARA1 v1.0 (test) | ADE0.2 | 58 | |
| Trajectory Prediction | ETH-UCY | -- | 57 | |
| Trajectory Prediction | ETH UCY Average (test) | ADE0.21 | 52 | |
| Future Trajectory Prediction | SDD (Stanford Drone Dataset) (test) | ADE8.87 | 51 | |
| Trajectory Prediction | Hotel ETH-UCY (test) | ADE0.13 | 48 | |
| Pedestrian trajectory prediction | ZARA2 UCY scene ETH (test) | ADE0.15 | 46 | |
| Trajectory Prediction | ZARA2 (test) | ADE (4.8s)0.15 | 45 | |
| Trajectory Prediction | UNIV ETH-UCY (test) | ADE0.27 | 41 | |
| Trajectory Forecasting | Stanford Drone Dataset | Average Displacement Error (ADE)8.87 | 35 |