Greedy-Like Algorithms for the Cosparse Analysis Model
Abstract
The cosparse analysis model has been introduced recently as an interesting alternative to the standard sparse synthesis approach. A prominent question brought up by this new construction is the analysis pursuit problem -- the need to find a signal belonging to this model, given a set of corrupted measurements of it. Several pursuit methods have already been proposed based on relaxation and a greedy approach. In this work we pursue this question further, and propose a new family of pursuit algorithms for the cosparse analysis model, mimicking the greedy-like methods -- compressive sampling matching pursuit (CoSaMP), subspace pursuit (SP), iterative hard thresholding (IHT) and hard thresholding pursuit (HTP). Assuming the availability of a near optimal projection scheme that finds the nearest cosparse subspace to any vector, we provide performance guarantees for these algorithms. Our theoretical study relies on a restricted isometry property adapted to the context of the cosparse analysis model. We explore empirically the performance of these algorithms by adopting a plain thresholding projection, demonstrating their good performance.
Cite
@article{arxiv.1207.2456,
title = {Greedy-Like Algorithms for the Cosparse Analysis Model},
author = {Raja Giryes and Sangnam Nam and Michael Elad and Rémi Gribonval and Mike E. Davies},
journal= {arXiv preprint arXiv:1207.2456},
year = {2014}
}