Poster
Learning Cooperative Trajectory Representations for Motion Forecasting
Hongzhi Ruan · Haibao Yu · Wenxian Yang · Siqi Fan · Zaiqing Nie
East Exhibit Hall A-C #4103
Motion forecasting is an essential task for autonomous driving, and effectively utilizing the information from infrastructure and other vehicles can enhance motion forecasting capabilities. Existing research has primarily focused on leveraging single-frame cooperative information to enhance the limited perception capability of the ego vehicle, while underutilizing the motion and interaction information of traffic participants observed from cooperative devices. In this paper, we propose a forecasting-oriented representation paradigm to utilize motion and interaction features from cooperative information. Specifically, we present V2X-Graph, a representative framework to achieve interpretable and end-to-end trajectory feature fusion for cooperative motion forecasting. V2X-Graph is evaluated on V2X-Seq, the vehicle-to-infrastructure (V2I) motion forecasting dataset. To further evaluate on vehicle-to-everything (V2X) scenario, we construct the first real-world V2X motion forecasting dataset V2X-Traj, which contains multiple autonomous vehicles and infrastructure in every scenario. Experimental results on both V2X-Seq and V2X-Traj show the advantage of our method. We hope both V2X-Graph and V2X-Traj can facilitate the further development of cooperative motion forecasting.
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