一种考虑人群时空异常的移动机器人长期自主的拥挤感知路径规划方法

Zijian Ge, Jingjing Jiang, M. Coombes
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引用次数: 0

摘要

针对移动机器人在人类居住环境中长期部署的情况,提出了一种拥堵感知路径规划方法。根据已知的时空人群模式,机器人将通过不那么拥挤的区域导航到目的地。传统的交通感知路由方法没有考虑可能偏离预测人群空间分布的宏观人群行为的时空异常。该方法通过集成部分更新记忆(PUM)模型来提高长期路径规划的适应性,该模型利用观测到的异常生成多层人群密度图,以提高估计精度。使用这张地图,我们能够生成一条较少机会遇到拥挤区域的路径。仿真结果表明,该方法在降低机器人接近密集人群的概率方面优于基准的拥塞感知路由方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A congestion-aware path planning method considering crowd spatial-temporal anomalies for long-term autonomy of mobile robots
A congestion-aware path planning method is pre-sented for mobile robots during long-term deployment in human occupied environments. With known spatial-temporal crowd patterns, the robot will navigate to its destination via less congested areas. Traditional traffic-aware routing methods do not consider spatial-temporal anomalies of macroscopic crowd behaviour that can deviate from the predicted crowd spatial distribution. The proposed method improves long-term path planning adaptivity by integrating a partially updated memory (PUM) model that utilizes observed anomalies to generate a multi-layer crowd density map to improve estimation accuracy. Using this map, we are able to generate a path that has less chance to encounter the crowded areas. Simulation results show that our method outperforms the benchmark congestion-aware routing method in terms of reducing the probability of robot's proximity to dense crowds.
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