| Literature DB >> 33748408 |
Rohan Varma1, Harlin Lee1, Jelena Kovačević2, Yuejie Chi1.
Abstract
This work studies the denoising of piecewise smooth graph signals that exhibit inhomogeneous levels of smoothness over a graph, where the value at each node can be vector-valued. We extend the graph trend filtering framework to denoising vector-valued graph signals with a family of non-convex regularizers, which exhibit superior recovery performance over existing convex regularizers. Using an oracle inequality, we establish the statistical error rates of first-order stationary points of the proposed non-convex method for generic graphs. Furthermore, we present an ADMM-based algorithm to solve the proposed method and establish its convergence. Numerical experiments are conducted on both synthetic and real-world data for denoising, support recovery, event detection, and semi-supervised classification.Entities:
Keywords: graph signal processing; graph trend filtering; non-convex optimization; semi-supervised classification
Year: 2019 PMID: 33748408 PMCID: PMC7970829 DOI: 10.1109/tsipn.2019.2957717
Source DB: PubMed Journal: IEEE Trans Signal Inf Process Netw ISSN: 2373-776X