Efficient Recovery of Sparse Graph Signals from Graph Filter Outputs
Gal Morgenstern, Tirza Routtenberg

TL;DR
This paper introduces three novel algorithms for recovering sparse graph signals from filtered outputs, leveraging double sparsity assumptions and the generalized information criterion, with applications in blind deconvolution.
Contribution
It presents new graph-based sparse recovery algorithms that improve support detection under double sparsity and low-order filter assumptions, including GM-GIC, graph-BNB-GIC, and GFOC.
Findings
Algorithms effectively recover sparse signals from filter outputs.
Proposed methods outperform existing techniques in support detection.
Applications demonstrated in blind deconvolution scenarios.
Abstract
This paper investigates the recovery of a node-domain sparse graph signal from the output of a graph filter. This problem, which is often referred to as the identification of the source of a diffused sparse graph signal, is seminal in the field of graph signal processing (GSP). Sparse graph signals can be used in the modeling of a variety of real-world applications in networks, such as social, biological, and power systems, and enable various GSP tasks, such as graph signal reconstruction, blind deconvolution, and sampling. In this paper, we assume double sparsity of both the graph signal and the graph topology, as well as a low-order graph filter. We propose three algorithms to reconstruct the support set of the input sparse graph signal from the graph filter output samples, leveraging these assumptions and the generalized information criterion (GIC). First, we describe the graph…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Gene expression and cancer classification · Advanced Computing and Algorithms
MethodsSparse Evolutionary Training · Graph InfoClust
