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Identifying First-Order Lowpass Graph Signals Using Perron Frobenius Theorem

机译:使用Perron Frobenius定理识别一阶低通图信号

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This paper is concerned with the blind identification of graph filters from graph signals. Our aim is to determine if the graph filter generating the graph signals is first-order lowpass without knowing the graph topology. Notice that lowpass graph filter is a common prerequisite for applying graph signal processing tools for sampling, denoising, and graph learning. Our method is inspired by the Perron Frobenius theorem, which observes that for first-order lowpass graph filter, the top eigenvector of output covariance would be the only eigenvector with elements of the same sign. Utilizing this observation, we develop a simple detector that answers if a given data set is produced by a first-order lowpass graph filter. We analyze the effects of finite-sample, graph size, observation noise, strength of lowpass filter, on the detector’s performance. Numerical experiments on synthetic and real data support our findings.
机译:本文涉及曲线图信号曲线滤波器的盲识别。 我们的目标是确定生成图形信号的图形滤波器是否是一阶低通,而不知道图形拓扑。 请注意,低通图滤波器是应用图形信号处理工具进行采样,去噪和图形学习的公共先决条件。 我们的方法受到珀罗frobenius定理的启发,该定理观察到为一阶低通图滤波器,输出协方差的顶部特征向量将是具有相同标志元素的唯一特征向量。 利用此观察,我们开发一个简单的探测器,如果给定的数据集是由一阶低通图滤波器产生的。 我们分析了有限样本,图形尺寸,观察噪声,低通滤波器强度的影响,对探测器的性能。 合成和实际数据的数值实验支持我们的研究结果。

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