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Downsampling of Signals on Graphs Via Maximum Spanning Trees

机译:通过最大生成树对图上的信号进行下采样

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摘要

Downsampling of signals living on a general weighted graph is not as trivial as of regular signals where we can simply keep every other samples. In this paper we propose a simple, yet effective downsampling scheme in which the underlying graph is approximated by a maximum spanning tree (MST) that naturally defines a graph multiresolution. This MST-based method significantly outperforms the two previous downsampling schemes, coloring-based and SVD-based, on both random and specific graphs in terms of computations and partition efficiency quantified by the graph cuts. The benefit of using MST-based downsampling for recently developed critical-sampling graph wavelet transforms in compression of graph signals is demonstrated.
机译:生活在一般加权图中的信号的下采样并不像常规信号那么简单,在常规信号中,我们可以简单地保留所有其他采样。在本文中,我们提出了一种简单而有效的下采样方案,其中,基础图通过自然定义图多分辨率的最大生成树(MST)进行近似。在随机图和特定图上,这种基于MST的方法在计算和分割图量化的分割效率方面均明显优于之前的两种降采样方案(基于着色和基于SVD)。演示了使用基于MST的下采样进行图形信号压缩时最近开发的关键采样图小波变换的好处。

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