Integrating Algorithmic Sampling-Based Motion Planning with Learning in Autonomous Driving

Yifan Zhang, Jinghuai Zhang, Jindi Zhang, Jianping Wang, K. Lu, Jeff Hong
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引用次数: 6

Abstract

Sampling-based motion planning (SBMP) is a major algorithmic trajectory planning approach in autonomous driving given its high efficiency and outstanding performance in practice. However, driving safety still calls for further refinement of SBMP. In this article we organically integrate algorithmic motion planning with learning models to improve SBMP in highway traffic scenarios from the following two perspectives. First, given the number of points to be sampled, we develop a new model to sample “important” points for SBMP by predicting the intention of surrounding vehicles and learning the distribution of human drivers’ trajectory. Second, we empirically study the relationship between the number of sample points and the environment, which is largely ignored in conventional SBMP. Then, we provide a guideline to select the appropriate number of points to be sampled under different scenarios to guarantee efficiency. The simulation experiments are conducted based on the vehicle trajectory dataset NGSIM. The results show that the proposed sampling strategy outperforms existing sampling strategies in terms of the computing time, traveling time, and smoothness of the trajectory.
自动驾驶中基于算法采样的运动规划与学习的集成
基于采样的运动规划(SBMP)以其高效率和优异的性能成为自动驾驶中主要的轨迹规划算法。然而,驾驶安全仍需要SBMP进一步完善。本文将算法运动规划与学习模型有机结合,从以下两个角度改进高速公路交通场景下的SBMP。首先,给定采样点的数量,我们开发了一个新的模型,通过预测周围车辆的意图和学习人类驾驶员的轨迹分布,对SBMP的“重要”点进行采样。其次,我们实证研究了样本点数量与环境之间的关系,这在传统的SBMP中很大程度上被忽略了。然后,我们提供了在不同场景下选择适当的采样点数以保证效率的指导方针。基于车辆轨迹数据集NGSIM进行了仿真实验。结果表明,所提出的采样策略在计算时间、行进时间和轨迹平滑度方面都优于现有的采样策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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