基于路径更新树的快速路径规划器,用于不可预测的变化环境

Chuan Wang, Bin Chen, Hong Liu
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引用次数: 0

摘要

对于不断变化的环境,尽管许多规划算法都侧重于如何获得有效且短的路径,但很少有规划算法能够用于提取持续有效的路径。特别是在大规模环境中,机器人需要获得一条持续有效的路径来进行智能决策。本文提出了一种路径更新树(PUT)方法来获得持续有效的区域路径,该方法利用投影Cspace中的扩展节点对环境进行近似估计。本文使用每个扩展节点来反映局部拥挤信息。根据每个区域的碰撞可能性、可达可能性和路径长度,生成一条连接目标和起点的近似路径。随着环境的变化,PUT节点不断更新,必要时通过重新生长生成新的区域路径。在此基础上,引入了基于PUT和局部路径生成器的两级路径规划器,合理分配计算资源。该方法在具有拥挤障碍物的大规模场景中是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path Updating Tree based fast path planner for unpredictable changing environments
For changing environments, although lots of planning algorithms have focused on how to get a valid and short path, seldom planning algorithms can be employed to extract a sustaining valid path. Especially for large-scale environments, getting a sustaining valid path is required to make intelligent decisions for robots. In this paper, a method of Path Updating Tree (PUT) is proposed to get such a sustainingly valid region path, which approximately estimates the environment using extended nodes in the projected Cspace. Each extended node is used to reflect local crowding information in this paper. An approximate path, which connected goal and start, is generated based on each region's collision possibility, reachable possibility and path length. With environment changing, nodes of PUT are updated and new region paths are generated by regrowing if necessary. Then a two-level path planner is introduced with PUT and local path generator to distribute the computational resource properly. The proposed method has shown to be efficient in large-scale scenarios with crowded obstacles.
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