Iteratively Locating Voronoi Vertices for Dispersion Estimation

Stephen R. Lindemann, P. Cheng
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引用次数: 4

Abstract

We present a new sampling-based algorithm for iteratively locating Voronoi vertices of a point set in the unit cube Id= [0, 1]d. The algorithm takes an input sample and executes a series of transformations, each of which projects the sample to a new face of the Voronoi cell in which it is located. After d such transformations, the sample has been transformed into a Voronoi vertex. Locating Voronoi vertices has many potential applications for motion planning, such as estimating dispersion for coverage and verification applications, and providing information useful for Voronoi-biased or multiple-tree planning. We prove theoretical results regarding our algorithm, and give experimental results comparing it to naive sampling for the problem of dispersion estimation.
离散估计中Voronoi顶点的迭代定位
我们提出了一种新的基于采样的算法,用于迭代定位单位立方体Id= [0,1]d中点集的Voronoi顶点。该算法获取一个输入样本并执行一系列转换,每个转换将样本投影到它所在的Voronoi细胞的新面。经过d次这样的变换后,样本被转换为Voronoi顶点。定位Voronoi顶点在运动规划中有许多潜在的应用,例如估计覆盖和验证应用的分散,并为Voronoi偏倚或多树规划提供有用的信息。我们证明了该算法的理论结果,并给出了与原始采样方法比较的实验结果。
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