Adaptive tuning of the sampling domain for dynamic-domain RRTs

L. Jaillet, A. Yershova, S. LaValle, T. Siméon
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引用次数: 137

Abstract

Sampling based planners have become increasingly efficient in solving the problems of classical motion planning and its applications. In particular, techniques based on the rapidly-exploring random trees (RRTs) have generated highly successful single-query planners. Recently, a variant of this planner called dynamic-domain RRT was introduced by Yershova et al. (2005). It relies on a new sampling scheme that improves the performance of the RRT approach on many motion planning problems. One of the drawbacks of this method is that it introduces a new parameter that requires careful tuning. In this paper we analyze the influence of this parameter and propose a new variant of the dynamic-domain RRT, which iteratively adapts the sampling domain for the Voronoi region of each node during the search process. This allows automatic tuning of the parameter and significantly increases the robustness of the algorithm. The resulting variant of the algorithm has been tested on several path planning problems.
动态域RRTs采样域的自适应调谐
基于采样的规划方法在解决经典运动规划问题及其应用方面变得越来越有效。特别是,基于快速探索随机树(RRTs)的技术已经生成了非常成功的单查询计划器。最近,Yershova等人(2005)引入了该规划器的一个变体,称为动态域RRT。它依赖于一种新的采样方案,提高了RRT方法在许多运动规划问题上的性能。这种方法的缺点之一是它引入了一个需要仔细调优的新参数。本文分析了该参数的影响,提出了一种新的动态域RRT算法,该算法在搜索过程中对每个节点的Voronoi区域迭代地自适应采样域。这允许自动调整参数,并显著提高算法的鲁棒性。所得到的算法变体已经在几个路径规划问题上进行了测试。
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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