基于混合诺伊曼级数和边变图滤波器的图信号去噪方法

C. Tseng, Su-Ling Lee
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引用次数: 1

摘要

本文提出了一种基于tikhonov的图信号去噪方法。首先,将信号去噪问题表述为最小化问题,其最优解需要计算矩阵逆,只允许集中处理。为了避免求解矩阵逆而获得分布式实现,研究了两种方法。一种是Neumann-series (NS)法;另一种是边变(EV)滤波器。结果表明,EV滤波器的收敛速度比NS方法快。但在稳态下,NS方法的近似误差比EV滤波器小。为此,本文提出了一种NS滤波器和EV滤波器的混合去噪方法,以同时获得较快的收敛速度和较小的逼近误差。利用来自传感器网络和社交网络的数据验证了所提出的图信号去噪方法的正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Signal Denoising Method via Hybrid Neumann-Series and Edge-Variant Graph Filters
In this study, a Tikhonov-based graph signal denoising method is presented. First, the signal denoising problem is formulated as a minimization problem and its optimal solution is required to compute the matrix inverse which only allows the centralized processing. To avoid solving matrix inverse and obtain the distributed implementation, two methods are studied. One is the Neumann-series (NS) method; the other is the edge-variant (EV) filter. As a result, EV filter has faster convergence speed than NS method. However, at steady state, NS method has smaller approximation error than EV filter. Thus, a hybrid denoising method of NS and EV filters is proposed in this paper to get fast convergence speed and smaller approximation error simultaneously. The data from sensor network and social network are used to examine the correctness of the proposed graph signal denoising approach.
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