机动条件下车辆自注意轨迹预测

Junan Huang, Zhiqiu Huang, Guohua Shen, Jinyong Wang, Xiaohua Yin
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引用次数: 0

摘要

预测周围车辆的运动对于自动驾驶汽车规划未来安全有效的轨迹是必要的。与经验丰富的人类驾驶员一样,自动驾驶汽车需要感知周围车辆的相互作用,并从众多选择中决定最佳轨迹。然而,以前的方法要么缺乏相互作用的建模,要么忽略了这个问题的多模态性质。本文针对弹道预测的两个重要线索:交互和机动,提出了机动条件注意网络(MAN)。MAN通过自注意社会池并行学习场景中所有车辆的相互作用,注意解码器根据预测的机动在3类:左变道(LCL)、右变道(LCR)和车道保持(LK)之间生成未来轨迹。实验证明了我们的模型在公开可用的NGSIM和HighD数据集上的预测改进。对机动预测精度与弹道误差之间的关系进行了定量分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Maneuver Conditioned Vehicle Trajectory Prediction Using Self-Attention
Forecasting the motion of surrounding vehicles is necessary for a self-driving vehicle to plan a safe and efficient trajectory for the future. Like experienced human drivers, the self-driving vehicle needs to perceive the interaction of surrounding vehicles and decide the best trajectory from many choices. However, previous methods either lack modeling of interactions or ignore the multi-modal nature of this problem. In this paper, we focus on two important cues of trajectory prediction: interaction and maneuver, and propose Maneuver conditioned Attentional Network named MAN. MAN learns the interactions of all vehicles in a scenario in parallel by self-attention social pooling and the attentional decoder generates the future trajectory conditioned on the predicted maneuver among 3 classes: Lane Changing Left (LCL), Lane Changing Right (LCR) and Lane Keeping (LK). Experiments demonstrate the improvement of our model in prediction on the publicly available NGSIM and HighD datasets. We also present quantitative analysis to study the relationship between maneuver prediction accuracy and trajectory error.
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