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Sampling and reconstruction of sparse signals on circulant graphs- an introduction to graph-FRI

机译:循环图上稀疏信号的采样与重构-图FRI简介

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With the objective of employing graphs toward a more generalized theory of signal processing, we present a novel sampling framework for (wavelet-)sparse signals defined on circulant graphs which extends basic properties of Finite Rate of Innovation (FRI) theory to the graph domain, and can be applied to arbitrary graphs via suitable approximation schemes. At its core, the introduced Graph-FRI-framework states that any K-sparse signal on the vertices of a circulant graph can be perfectly reconstructed from its dimensionality-reduced representation in the graph spectral domain, the Graph Fourier Transform (GFT), of minimum size 2K. By leveraging the recently developed theory of e-splines and e-spline wavelets on graphs, one can decompose this graph spectral transformation into the multiresolution low-pass filtering operation with a graph e-spline filter, with subsequent transformation to the spectral graph domain; this allows to infer a distinct sampling pattern, and, ultimately, the structure of an associated coarsened graph, which preserves essential properties of the original, including circularity and, where applicable, the graph generating set. (C) 2017 Elsevier Inc. All rights reserved.
机译:为了将图应用于更通用的信号处理理论,我们为循环图定义了一种针对(小波)稀疏信号的新颖采样框架,将有限创新率(FRI)理论的基本属性扩展到图域,并可以通过适当的近似方案应用于任意图。从本质上讲,引入的Graph-FRI框架指出,循环图顶点上的任何K稀疏信号都可以从图谱域中的降维表示图傅里叶变换(GFT)完美地重建。最小大小2K。通过利用最近开发的图上电子样条和电子样条小波理论,可以使用图形电子样条滤波器将图形频谱变换分解为多分辨率低通滤波操作,然后转换为频谱图域;这样就可以推断出不同的采样模式,并最终推断出关联的粗化图的结构,从而保留了原图的基本属性,包括圆度以及图形生成集(如果适用)。 (C)2017 Elsevier Inc.保留所有权利。

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