Dynamic-Domain RRTs: Efficient Exploration by Controlling the Sampling Domain

A. Yershova, L. Jaillet, T. Siméon, S. LaValle
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引用次数: 303

Abstract

Sampling-based planners have solved difficult problems in many applications of motion planning in recent years. In particular, techniques based on the Rapidly-exploring Random Trees (RRTs) have generated highly successful single-query planners. Even though RRTs work well on many problems, they have weaknesses which cause them to explore slowly when the sampling domain is not well adapted to the problem. In this paper we characterize these issues and propose a general framework for minimizing their effect. We develop and implement a simple new planner which shows significant improvement over existing RRT-based planners. In the worst cases, the performance appears to be only slightly worse in comparison to the original RRT, and for many problems it performs orders of magnitude better.
动态域RRTs:控制采样域的有效探索
近年来,基于采样的规划器解决了许多运动规划应用中的难题。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。尽管RRTs在许多问题上都能很好地工作,但它们也有弱点,当采样域不能很好地适应问题时,它们会探索得很慢。在本文中,我们描述了这些问题,并提出了一个总体框架,以尽量减少其影响。我们开发并实施了一个简单的新计划,它比现有的基于rrt的计划有了显著的改进。在最坏的情况下,与原始RRT相比,性能似乎只是稍微差一点,而对于许多问题,它的性能要好几个数量级。
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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