The Effect of Graph Frequencies on Dynamic Structures in Graph Signal Processing

S. Goerttler, M. Wu, F. He
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Abstract

Multivariate signals are signals consisting of multiple signals measured simultaneously over time and are most commonly acquired by sensor networks. The emerging field of graph signal processing (GSP) promises to analyse dynamic characteristics of multivariate signals, while at the same time taking the network, or spatial structure between the signals into account. To do so, GSP decomposes the multivariate signals into graph frequency signals, which are ordered by their magnitude. However, the meaning of the graph frequencies in terms of this ordering remains poorly understood. Here, we investigate the role the ordering plays in preserving valuable dynamic structures in the signals, with neuroimaging applications in mind. In order to overcome the limitations in sample size common to neurophysiological data sets, we introduce a minimalist simulation framework to generate arbitrary amounts of data. Using this artificial data, we find that lower graph frequency signals are less suitable for classifying neurophysiological data than higher graph frequency signals. We further introduce a baseline testing framework for GSP. Using this framework, we conclude that dynamic, or spectral structures are poorly preserved in GSP, high-lighting current limitations of GSP for neuroimaging.
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图信号处理中图频率对动态结构的影响
多元信号是由多个信号在一段时间内同时测量的信号组成的信号,最常由传感器网络获取。新兴的图信号处理(GSP)领域有望分析多元信号的动态特性,同时考虑信号之间的网络或空间结构。为此,GSP将多变量信号分解成图形频率信号,这些信号按其幅度排序。然而,图形频率在这种顺序方面的含义仍然知之甚少。在这里,我们研究了排序在保留信号中有价值的动态结构方面所起的作用,并考虑了神经成像的应用。为了克服神经生理学数据集常见的样本量限制,我们引入了一个极简模拟框架来生成任意数量的数据。利用这些人工数据,我们发现较低的图频信号比较高的图频信号更不适合对神经生理数据进行分类。我们进一步引入普惠制的基准测试框架。使用这个框架,我们得出结论,动态或光谱结构在GSP中保存得很差,GSP用于神经成像的高照明电流限制。
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