基于自适应主成分分析的重要性抽样

J. Rosell, Luis Cruz, R. Suárez, Alexander Pérez
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引用次数: 5

摘要

基于采样的方法是目前解决路径规划问题最有效的方法,因为它们的性能依赖于在与问题相关的配置空间的那些区域生成样本的能力。本文提出了一种新的重要采样方法,利用主成分分析对采样区域进行聚焦,以提高发现无碰撞构型的概率。用窄通道二维构型空间进行了说明,并与均匀随机抽样方法进行了比较。
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Importance sampling based on adaptive principal component analysis
Sampling-based approaches are currently the most efficient ones to solve path planning problems, being their performance dependant on the ability to generate samples in those areas of the configuration space relevant to the problem. This paper introduces a novel importance sampling method that uses Principal Component Analysis to focalize the region where to sample in order to increase the probability of finding collision-free configurations. The proposal is illustrated with a 2D configuration space with a narrow passage and compared to the uniform random sampling method.
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