GSAN:用于自动驾驶交互测量的图自关注网络

Luyao Ye, Zezhong Wang, Xinhong Chen, Jianping Wang, Kui Wu, K. Lu
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引用次数: 3

摘要

车辆之间的相互作用建模被认为是提高自动驾驶效率和安全性的关键,因为真实的交通场景,如合并车道,交叉路口和变道,充满了复杂的相互作用。在文献中,交互被隐式地考虑在单个任务中,这使得很难提取其他相关下游任务的交互。在本文中,我们提出了一种新的图形自关注网络(GSAN),从历史轨迹中快速捕获和量化车辆之间的交互影响,可以作为将交互影响引入不同下游任务的工具,并进一步分析影响车辆之间交互的主要特征。以轨迹预测任务为例进行实验,说明如何利用时空交互向量来提高交互相关任务的性能。实验结果表明,GSAN模块在弹道预测精度方面优于现有的解决方案。此外,我们使用来自GSAN模块的训练过的注意力值,通过热图可视化所有周围车辆对自我车辆的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GSAN: Graph Self-Attention Network for Interaction Measurement in Autonomous Driving
Modeling the interactions among vehicles has been considered essential in improving efficiency and safety in autonomous driving, since the real traffic scenarios, such as merging lanes, intersection, and lane change, are full of complex interactions. In the literature, interaction is considered implicitly in individual tasks, which makes it hard to extract the interactions for other related downstream tasks. In this paper, we propose a novel Graph Self-Attention Network (GSAN) to quickly capture and quantify the influence of interactions among vehicles from historical trajectories, which can be used as a tool to introduce the impact of interactions into different downstream tasks and further analyze the dominating features affecting the interactions among vehicles. We conduct experiments on the trajectory prediction task as one example to illustrate how to use the spatial-temporal interaction vector to improve the performance of interaction related tasks. The experiment results demonstrate that the GSAN module outperforms the state-of-the-art solutions in terms of the trajectory prediction accuracy. Also, we visualize the effects from all surrounding vehicles on the ego vehicle by heat maps using the trained attention values from the GSAN module.
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