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Planar Minimization Diagrams via Subdivision with Applications to Anisotropic Voronoi Diagrams

机译:通过细分的平面最小化图及其对各向异性Voronoi图的应用

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摘要

Let X = {f(1), ..., f(n)} be a set of scalar functions of the form f(i) : (2) which satisfy some natural properties. We describe a subdivision algorithm for computing a clustered epsilon-isotopic approximation of the minimization diagram of X. By exploiting soft predicates and clustering of Voronoi vertices, our algorithm is the first that can handle arbitrary degeneracies in X, and allow scalar functions which are piecewise smooth, and not necessarily semi-algebraic. We apply these ideas to the computation of anisotropic Voronoi diagram of polygonal sets; this is a natural generalization of anisotropic Voronoi diagrams of point sites, which extends multiplicatively weighted Voronoi diagrams. We implement a prototype of our anisotropic algorithm and provide experimental results.
机译:令X = {f(1),...,f(n)}是满足某些自然特性的形式为f(i):(2)的一组标量函数。我们描述了一种细分算法,用于计算X的最小化图的聚类的ε-同位素近似。通过利用软谓词和Voronoi顶点的聚类,我们的算法是第一个可以处理X中任意退化的算法,并且允许分段的标量函数平滑的,不一定是半代数的。我们将这些思想应用于多边形集的各向异性Voronoi图的计算。这是点点各向异性Voronoi图的自然概括,它扩展了加权加权Voronoi图。我们实现了各向异性算法的原型,并提供了实验结果。

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