Kernel-based deterministic blue-noise sampling of arbitrary probability density functions

U. Hanebeck
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引用次数: 12

Abstract

This paper provides an efficient method for approximating a given continuous probability density function (pdf) by a Dirac mixture density. Optimal parameters are determined by systematically minimizing a distance measure. As standard distance measures are typically not well defined for discrete densities on continuous domains, we focus on shifting the mass distribution of the approximating density as close to the true density as possible. Instead of globally comparing the masses as in a previous paper, the key idea is to characterize individual Dirac components by kernel functions representing the spread of probability mass that is appropriate at a given location. A distance measure is then obtained by comparing the deviation between the true density and the induced kernel density. This new method for Dirac mixture approximation provides high-quality approximation results, can handle arbitrary pdfs, allows considering constraints for, e.g., maintaining certain moments, and is fast enough for online processing.
基于核的任意概率密度函数的确定性蓝噪声采样
本文给出了用狄拉克混合密度近似给定连续概率密度函数的一种有效方法。通过系统地最小化距离度量来确定最优参数。由于标准距离度量通常不能很好地定义连续域上的离散密度,因此我们将重点放在将近似密度的质量分布尽可能接近真实密度上。与上一篇论文中对质量进行全局比较不同,本文的关键思想是通过核函数来表征单个狄拉克分量,核函数表示在给定位置合适的概率质量的扩散。然后通过比较真实密度和诱导核密度之间的偏差来获得距离度量。这种新的Dirac混合近似方法提供了高质量的近似结果,可以处理任意pdf,允许考虑约束,例如,保持某些时刻,并且足够快,可以在线处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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