Modeling and Recovery of Graph Signals and Difference-Based Signals

Ariel Kroizer, Yonina C. Eldar, T. Routtenberg
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引用次数: 11

Abstract

In this paper, we consider the problem of representing and recovering graph signals with a nonlinear measurement model. We propose a two-stage graph signal processing (GSP) framework. First, a GSP representation is obtained by finding the graph filter that best approximates the known measurement function. The new GSP representation enables performing tractable operations over graphs, as well as gaining insights into the signal graph-frequency contents. Then, we formulate the signal recovery problem under the smoothness constraint and derive a regularized least-squares (LS) estimator, which is obtained by applying the inverse of the approximated graph filter on the nonlinear measurements. In the second part of this paper, we investigate the proposed recovery and representation approach for the special case of graph signals that are influenced by the differences between vertex values only. Difference-based graph signals arise, for example, when modeling power signals as a function of the voltages in electrical networks. We show that any difference-based graph signal corresponds to a filter that lacks the zero-order filter coefficient, and thus, these signals can be recovered up to a constant by the regularized LS estimator. In our simulations, we show that for the special case of state estimation in power systems the proposed GSP approach outperforms the state-of-the-art estimator in terms of total variation.
图信号和差分信号的建模与恢复
本文研究了用非线性测量模型表示和恢复图信号的问题。我们提出了一个两阶段图信号处理(GSP)框架。首先,通过寻找最接近已知测量函数的图滤波器获得GSP表示。新的GSP表示支持在图形上执行可处理的操作,并获得对信号图形频率内容的见解。在此基础上,给出了平滑约束下的信号恢复问题,并推导了正则化最小二乘估计量,该估计量是通过对非线性测量值应用近似图滤波器的逆得到的。在本文的第二部分中,我们研究了仅受顶点值差异影响的图信号的特殊情况的恢复和表示方法。例如,当将电力信号建模为电网电压的函数时,就会出现基于差分的图形信号。我们证明了任何基于差分的图信号对应于一个缺乏零阶滤波系数的滤波器,因此,这些信号可以被正则化LS估计器恢复到一个常数。在我们的模拟中,我们表明,对于电力系统中状态估计的特殊情况,所提出的GSP方法在总变化方面优于最先进的估计器。
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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