Low-Complexity Reconstruction of Sampled Graph Signals in Local Graph Fourier Subspaces

Published: 25 Mar 2025, Last Modified: 20 May 2025SampTA 2025 OralEveryoneRevisionsBibTeXCC BY-NC-ND 4.0
Session: General
Keywords: graph signal processing, sampling and construction
TL;DR: we propose computationally efficient recovery of sampled graph signals living in a subspace with local bandlimitation
Abstract: In our prior work, we have introduced local graph Fourier frames (LGFFs) as a flexible and powerful modeling and analysis tool for graph signals. The most important practical advantage of LGFFs is their outstanding computational efficiency. In this paper, we discuss the vertex-domain sampling and interpolation (recovery) of graph signals that live in an LGFF subspace. We formulate perfect reconstruction conditions and develop low-complexity recovery algorithms that also work in the presence of measurement noise. Furthermore, we discuss interesting special cases and illustrate our framework by numerical experiments.
Submission Number: 75
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