沃瑟斯坦蓝噪声采样

Hongxing Qin, Yi Chen, Jinlong He, Baoquan Chen
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引用次数: 51

摘要

本文提出了一种多类蓝噪声采样算法,将样本作为多个密度分布的约束Wasserstein质心。利用熵正则化项,给出了最优运输问题中的约束运输计划,打破了先前的容量约束Voronoi镶嵌法所要求的划分。熵正则化项不仅可以控制蓝噪声采样的空间正则性,还可以减少多类采样中Vornoi单元期望质心之间的冲突。此外,保证了每个单独类别及其组合类别的自适应蓝噪声特性。该方法可以很容易地扩展到点集表面上的多类采样。我们还演示了在对象分布和颜色点画中的应用。
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Wasserstein blue noise sampling
In this article, we present a multi-class blue noise sampling algorithm by throwing samples as the constrained Wasserstein barycenter of multiple density distributions. Using an entropic regularization term, a constrained transport plan in the optimal transport problem is provided to break the partition required by the previous Capacity-Constrained Voronoi Tessellation method. The entropic regularization term cannot only control spatial regularity of blue noise sampling, but it also reduces conflicts between the desired centroids of Vornoi cells for multi-class sampling. Moreover, the adaptive blue noise property is guaranteed for each individual class, as well as their combined class. Our method can be easily extended to multi-class sampling on a point set surface. We also demonstrate applications in object distribution and color stippling.
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