Development of pedestrian collision avoidance strategy based on the fusion of Markov and social force models

Bin Tang, Zhengying Yang, Haobin Jiang, Zi-ying Hu
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Abstract

Abstract. In urban traffic, accurate prediction of pedestrian trajectory and advanced collision avoidance strategy can effectively reduce the collision risk between intelligent vehicles and pedestrians. In order to improve the prediction accuracy of pedestrian trajectory and the safety of collision avoidance, a longitudinal and lateral intelligent collision avoidance strategy based on pedestrian trajectory prediction is proposed. Firstly, the process of a pedestrian crossing the road is considered as a combination of free motion described by first-order Markov model and the constrained motion presented by improved social force model. The predicted pedestrian trajectory is obtained by weighted fusion of the trajectories of the two models with a multiple linear regression algorithm. Secondly, according to the predicted pedestrian trajectory and time to collision (TTC) the longitudinal and lateral collision avoidance strategy is designed. The improved artificial potential field method is used to plan the lateral collision avoidance path in real time based on the predicted pedestrian position, and a fuzzy controller is constructed to obtain the desired deceleration of the vehicle. Finally, the pedestrian motion fusion model and the longitudinal and lateral collision avoidance strategy are verified by Prescan and Simulink co-simulation. The results show that the average displacement error (ADE) and final displacement error (FDE) of pedestrian trajectory based on pedestrian motion fusion model are smaller compared with a Markov model and improved social force model, and the proposed pedestrian collision avoidance strategy can effectively achieve longitudinal and lateral collision avoidance.
基于马尔可夫模型和社会力模型融合的行人防撞策略开发
摘要在城市交通中,准确的行人轨迹预测和先进的避撞策略可以有效降低智能车辆与行人之间的碰撞风险。为了提高行人轨迹预测精度和避撞安全性,本文提出了一种基于行人轨迹预测的纵向和横向智能避撞策略。首先,将行人横穿马路的过程视为一阶马尔可夫模型所描述的自由运动和改进的社会力模型所呈现的约束运动的组合。通过多元线性回归算法对两个模型的轨迹进行加权融合,得到预测的行人轨迹。其次,根据预测的行人轨迹和碰撞时间(TTC)设计纵向和横向防撞策略。根据预测的行人位置,采用改进的人工势场方法实时规划横向避撞路径,并构建模糊控制器以获得车辆所需的减速度。最后,通过 Prescan 和 Simulink 协同仿真验证了行人运动融合模型以及纵向和横向防撞策略。结果表明,与马尔可夫模型和改进的社会力模型相比,基于行人运动融合模型的行人轨迹平均位移误差(ADE)和最终位移误差(FDE)更小,所提出的行人防撞策略能有效实现纵向和横向防撞。
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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