多尺度图散射变换

Genjia Liu, Maosen Li, Siheng Chen
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引用次数: 0

摘要

图散射变换(GST)是一种数学设计的图卷积模型,它迭代地应用图滤波器组来实现对图信号的综合特征提取。虽然GST在图谱域中对图信号进行了过度分解,但它并没有明确地在图顶点域中实现多分辨率,从而导致处理具有分层结构的图的潜在失败。为了解决这一限制,本研究提出了一种新的多尺度图散射变换(MGST)来实现沿图顶点和谱域的分层表示。通过对图结构进行递归划分,得到不同尺度的子图,然后对每个子图进行散射频率分解。MGST最终得到一系列表示,每个表示对应一个特定的图顶点-谱子带,实现了图顶点和谱域的多分辨率。在实验中,我们验证了MGST优越的经验性能,并可视化了每个图顶点光谱子带。
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Multiscale Graph Scattering Transform
Graph scattering transform (GST) is mathematically-designed graph convolutional model that iteratively applies graph filter banks to achieve comprehensive feature extraction from graph signals. While GST performs excessive decomposition of graph signals in the graph spectral domain, it does not explicitly achieve multiresolution in the graph vertex domain, causing potential failure in handling graphs with hierarchical structures. To address the limitation, this work proposes novel multiscale graph scattering transform (MGST) to achieve hierarchical representations along both graph vertex and spectral domains. With recursive partitioning a graph structure, we yield multiple subgraphs at various scales and then perform scattering frequency decomposition on each subgraph. MGST finally obtains a series of representations and each of them corresponds to a specific graph vertex-spectral subband, achieving multiresolution along both graph vertex and spectral domains. In the experiments, we validate the superior empirical performances of MGST and visualize each graph vertex-spectral subband.
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