自适应组合多采样策略的概率路线图规划

David Hsu, Zheng Sun
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引用次数: 14

摘要

最近提出了几种复杂的采样策略来解决概率路线图(PRM)规划中的窄通道问题。它们在不同的环境中都有独特的优点和缺点,但总的来说,没有一个是足够的。本文提出了一种多采样策略自适应组合的PRM规划方法。使用这种方法,我们描述了一种自适应混合采样(AHS)策略,该策略使用两部分采样器:桥测试,窄通道专用采样器和均匀采样器。我们在2到8个自由度的机器人上测试了AHS策略。这些初步测试表明,与定权混合采样策略相比,AHS策略始终具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptively combining multiple sampling strategies for probabilistic roadmap planning
Several sophisticated sampling strategies have been proposed recently to address the narrow passage problem for probabilistic roadmap (PRM) planning. They all have unique strengths and weaknesses in different environments, but in general, none seems sufficient on its own. In this paper, we present a new approach that adaptively combines multiple sampling strategies for PRM planning. Using this approach, we describe an adaptive hybrid sampling (AHS) strategy using two component samplers: the bridge test, a specialized sampler for narrow passages, and the uniform sampler. We tested the AHS strategy on robots with two to eight degrees of freedom. These preliminary tests show that the AHS strategy achieves consistently good performance, compared with fixed-weight hybrid sampling strategies.
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