增加了概率路线图的可见性采样

R. Kala
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引用次数: 1

摘要

基于采样的规划算法通过对多个顶点进行采样,绘制出路线图或树状图,然后对其进行搜索,从而解决机器人运动规划问题。采样策略表示生成用于构造树或路线图的样本的机制。本文针对概率路线图技术提出了一种新的采样策略,该策略生成的样本以样本可见性最大化为目标。增加的可见性使得用邻近样本构建边缘更容易,从而有助于尽早得到解决方案。在此基础上提出了三种新的采样方法。第一个采样器在走廊内生成样本,并将它们精确地推送到走廊中心。第二个采样器使用距离阈值二元搜索将样本近似地放置在走廊中心。最后一个采样器试图将采样偏向狭窄的走廊,同时仍然将样本大致放置在走廊中心。增加的可见性为其中增加的计算工作量带来了回报。该方法在狭窄的走廊场景中进行了测试,实验发现该方法优于概率路线图的所有最先进的采样技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Increased visibility sampling for probabilistic roadmaps
Sampling based planning algorithms solve the problem of Robot Motion Planning by sampling a number of vertices to make a roadmap or a tree, which is then searched for a solution. The sampling strategy denotes the mechanism to generate samples used to construct the tree or the roadmap. In this paper new sampling strategies are proposed for the Probabilistic Roadmap technique that generate samples aiming at maximizing the sample visibility. The increased visibility makes it easier to construct edges with the neighboring samples and thus contribute to get a solution early. Based on this principle three new samplers are pro-posed. The first sampler generates samples inside corridors and promotes them exactly to the corridor centres. The second sampler uses a distance threshold bi-nary search to approximately place the samples in the corridor centre. The last sampler attempts to bias the sampling towards narrow corridors, while still placing the samples approximately at the corridor centres. The increased visibility pays off for the increased computation effort incurred therein. The approach is tested for narrow corridor scenarios and is experimentally found to surpass all state-of-the-art sampling techniques of Probabilistic Roadmap.
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