CVROOct 19, 2023

Real-Time Motion Prediction via Heterogeneous Polyline Transformer with Relative Pose Encoding

arXiv:2310.12970v171 citationsh-index: 191Has Code
Originality Incremental advance
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This work addresses real-time motion prediction for autonomous driving systems, offering an incremental improvement in efficiency while maintaining competitive accuracy.

The paper tackles the computational inefficiency and poor scalability of existing agent-centric motion prediction methods for autonomous driving by introducing a novel attention mechanism and hierarchical framework, achieving superior performance on Waymo and Argoverse-2 datasets among end-to-end methods without expensive post-processing.

The real-world deployment of an autonomous driving system requires its components to run on-board and in real-time, including the motion prediction module that predicts the future trajectories of surrounding traffic participants. Existing agent-centric methods have demonstrated outstanding performance on public benchmarks. However, they suffer from high computational overhead and poor scalability as the number of agents to be predicted increases. To address this problem, we introduce the K-nearest neighbor attention with relative pose encoding (KNARPE), a novel attention mechanism allowing the pairwise-relative representation to be used by Transformers. Then, based on KNARPE we present the Heterogeneous Polyline Transformer with Relative pose encoding (HPTR), a hierarchical framework enabling asynchronous token update during the online inference. By sharing contexts among agents and reusing the unchanged contexts, our approach is as efficient as scene-centric methods, while performing on par with state-of-the-art agent-centric methods. Experiments on Waymo and Argoverse-2 datasets show that HPTR achieves superior performance among end-to-end methods that do not apply expensive post-processing or model ensembling. The code is available at https://github.com/zhejz/HPTR.

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