Recent progress on sampling based dynamic motion planning algorithms

A. Short, Z. Pan, N. Larkin, S. Duin
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引用次数: 23

Abstract

This paper reviews recent developments extending sampling based motion planning algorithms to operate in dynamic environments. Sampling based planners provide an effective approach for solving high degree of freedom robot motion planning problems. The two most common algorithms are the Probabilistic Roadmap Method and Rapidly Exploring Random Trees. These standard techniques are well established, however they assume a fully known environment and generate paths ahead of time. For realistic applications a robot may be required to update its path in real-time as information is gained or obstacles change position. Variants of these standard algorithms designed for dynamic environments are categorically presented and common implementation strategies are explored.
基于采样的动态运动规划算法研究进展
本文综述了将基于采样的运动规划算法扩展到动态环境中的最新进展。基于采样的规划方法为解决高自由度机器人运动规划问题提供了一种有效的方法。最常用的两种算法是概率路线图法和快速探索随机树法。这些标准技术已经得到了很好的建立,但是它们假设了一个完全已知的环境,并提前生成路径。对于现实应用,机器人可能需要在获得信息或障碍物改变位置时实时更新其路径。对这些为动态环境设计的标准算法的变体进行了分类介绍,并探讨了常见的实现策略。
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