Two Channel Filter Banks on Arbitrary Graphs with Positive Semi Definite Variation Operators
Eduardo Pavez, Benjamin Girault, Antonio Ortega, Philip A. Chou

TL;DR
This paper introduces a flexible, efficient two-channel filter bank framework for signals on arbitrary graphs using positive semi definite variation operators, extending previous bipartite graph methods.
Contribution
It generalizes bipartite graph filter banks to arbitrary graphs by developing new graph Fourier transforms and an optimization algorithm for vertex partitions.
Findings
Achieves perfect reconstruction and critical sampling on arbitrary graphs.
Demonstrates efficient implementation on large 3D point clouds.
Improves signal representation quality compared to state-of-the-art methods.
Abstract
We propose novel two-channel filter banks for signals on graphs. Our designs can be applied to arbitrary graphs, given a positive semi definite variation operator, while using arbitrary vertex partitions for downsampling. The proposed generalized filter banks (GFBs) also satisfy several desirable properties including perfect reconstruction and critical sampling, while having efficient implementations. Our results generalize previous approaches that were only valid for the normalized Laplacian of bipartite graphs. Our approach is based on novel graph Fourier transforms (GFTs) given by the generalized eigenvectors of the variation operator. These GFTs are orthogonal in an alternative inner product space which depends on the downsampling and variation operators. Our key theoretical contribution is showing that the spectral folding property of the normalized Laplacian of bipartite graphs,…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Data Visualization and Analytics · Advanced Computing and Algorithms
