Xing Gao, Xiaogang Jia, Yikang Li, Hongkai Xiong
Due to the complex and changing interactions in dynamic scenarios, motion forecasting is a challenging problem in autonomous driving. Most existing works exploit static road graphs to characterize scenarios and are limited in modeling evolving spatio-temporal dependencies in dynamic scenarios. In this paper, we resort to dynamic heterogeneous graphs to model the scenario. Various scenario components including vehicles (agents) and lanes, multi-type interactions, and their changes over time are jointly encoded. Furthermore, we design a novel heterogeneous graph convolutional recurrent network, aggregating diverse interaction information and capturing their evolution, to learn to exploit intrinsic spatio-temporal dependencies in dynamic graphs and obtain effective representations of dynamic scenarios. Finally, with a motion forecasting decoder, our model predicts realistic and multi-modal future trajectories of agents and outperforms state-of-the-art published works on several motion forecasting benchmarks.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Trajectory Prediction | Argoverse2 | MR (K=6) | 0.18 | HeteroGCN |
| Trajectory Prediction | Argoverse2 | brier-minFDE (K=6) | 1.9 | HeteroGCN |
| Trajectory Prediction | Argoverse2 | minADE (K=6) | 0.69 | HeteroGCN |
| Trajectory Prediction | Argoverse2 | minFDE (K=6) | 1.34 | HeteroGCN |
| Trajectory Prediction | Argoverse | MR (K=6) | 0.12 | HeteroGCN |
| Trajectory Prediction | Argoverse | brier-minFDE (K=6) | 1.75 | HeteroGCN |
| Trajectory Prediction | Argoverse | minADE (K=6) | 0.79 | HeteroGCN |
| Trajectory Prediction | Argoverse | minFDE (K=6) | 1.16 | HeteroGCN |