基于最优子空间图滤波的信号表示

Ying Chen, Jingjing Liu, Lin Zhou, Li Zhao
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引用次数: 0

摘要

信号表示是信号处理中的一个主要问题。本文提出了一种用于信号表示的子空间图滤波方法。我们证明了信号的扩展奇异值分解(SVD)模型本质上是一个子空间图滤波,并建立了从奇异值分解到图滤波的桥梁。在奇异值分解提供的空间中依次学习平滑子空间图滤波。在实验中,我们比较了扩展奇异值分解和提出的子空间图滤波的信号恢复性能。结果表明,与奇异值分解空间相比,我们的平滑子空间能更好地从噪声信号中重构出干净的信号,其中学习到的平滑图滤波基比奇异值分解基对噪声的处理具有更强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Signal Representation with Optimal Subspace Graph Filtering
Signal representation is a prime problem in signal processing. In this paper, we propose a subspace graph filtering method for signal representation. We demonstrate an extended singular value decomposition (SVD) model of signal essentially is a subspace graph filtering, and build a bridge from SVD to graph filtering. A smoothing subspace graph filtering is sequentially learned in the space provided by SVD. In the experiments, we compare the signal restoration performance between the extended SVD and the proposed subspace graph filtering. It shows that clean signal can be better reconstructed from the noisy signal in our smoothing subspace than the SVD space, where the learned smoothed bases of graph filtering are more robust than the bases of SVD to cope with noise.
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