53 articles  [version française]

inria-00369577, version 1

Structured Sparsity: from Mixed Norms to Structured Shrinkage

Matthieu Kowalski () 1, Bruno Torrésani () 1

SPARS'09 - Signal Processing with Adaptive Sparse Structured Representations (2009)

Abstract: Sparse and structured signal expansions on dictionaries can be obtained through explicit modeling in the coefficient domain. The originality of the present contribution lies in the construction and the study of generalized shrinkage operators, whose goal is to identify structured significance maps. These generalize Group LASSO and the previously introduced Elitist LASSO by introducing more flexibility in the coefficient domain modeling. We study experimentally the performances of corresponding shrinkage operators in terms of significance map estimation in the orthogonal basis case. We also study their performance in the overcomplete situation, using iterative thresholding.

  • 1:  Laboratoire d'Analyse, Topologie, Probabilités (LATP)
  • CNRS : UMR6632 – Université de Provence - Aix-Marseille I – Université Paul Cézanne - Aix-Marseille III
  • Domain : Computer Science/Signal and Image Processing
    Engineering Sciences/Signal and Image processing
 
  • inria-00369577, version 1
  • oai:hal.inria.fr:inria-00369577
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  • Submitted on: Friday, 20 March 2009 13:35:14
  • Updated on: Friday, 20 March 2009 13:54:43