Computing multiple guiding paths for sampling-based motion planning

Vojtěch Vonásek, Robert Pěnička, B. Kozlíková
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引用次数: 7

Abstract

Path planning of 3D solid objects leads to search in a six-dimensional configuration space, which can be solved by sampling-based motion planning. The well-known issue of sampling-based planners is the narrow passage problem, which is caused by the presence of small regions of the configuration space that are difficult to cover by random samples. Guided-based planners cope with this issue by increasing the probability of sampling along an estimated solution (a guiding path). In the case of six-dimensional configuration space, the guiding path needs to be computed in the configuration space rather than in the workspace. Fast computation of guiding paths can be achieved by solving a similar, yet simpler problem, e.g., by reducing the size of the robot. This results in an approximate solution (path) that is assumed to be located near the solution of the original problem. The guided sampling along this approximate solution may, however, fail if the approximate solution is too far from the desired solution. In this paper, we cope with this problem by sampling the configuration space along multiple approximate solutions. The approximate solutions are computed using a proposed iterative process: after a path (solution) is found, it forms a region where the subsequent search is inhibited, which boosts the search of new solutions. The performance of the proposed approach is verified in scenarios with multiple narrow passages and compared with the state-of-the-art planners.
基于采样的多路径运动规划计算
三维实体物体的路径规划需要在六维位形空间中进行搜索,这可以通过基于采样的运动规划来解决。基于抽样的规划器的一个众所周知的问题是窄通道问题,这是由于配置空间的小区域难以被随机样本覆盖而引起的。基于指导的计划者通过增加沿估计解决方案(指导路径)采样的概率来解决这个问题。在六维构型空间中,需要在构型空间中而不是在工作空间中计算导轨路径。通过解决类似但更简单的问题,例如减小机器人的尺寸,可以实现快速的路径计算。这将产生一个近似解(路径),假定它位于原始问题的解附近。然而,如果近似解离期望的解太远,沿着这个近似解的引导抽样可能会失败。在本文中,我们通过沿多个近似解对构形空间进行采样来解决这个问题。近似解的计算采用一种提出的迭代过程:在找到路径(解)后,它形成一个区域,该区域抑制后续搜索,从而促进对新解的搜索。在多个狭窄通道的场景中验证了所提出方法的性能,并与最先进的规划者进行了比较。
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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