• DocumentCode
    1757582
  • Title

    Robust Sparse Analysis Regularization

  • Author

    Vaiter, S. ; Peyre, Gabriel ; Dossal, C. ; Fadili, J.

  • Author_Institution
    CEREMADE, Univ. Paris-Dauphine, Paris, France
  • Volume
    59
  • Issue
    4
  • fYear
    2013
  • fDate
    41365
  • Firstpage
    2001
  • Lastpage
    2016
  • Abstract
    This paper investigates the theoretical guarantees of l1-analysis regularization when solving linear inverse problems. Most of previous works in the literature have mainly focused on the sparse synthesis prior where the sparsity is measured as the l1 norm of the coefficients that synthesize the signal from a given dictionary. In contrast, the more general analysis regularization minimizes the l1 norm of the correlations between the signal and the atoms in the dictionary, where these correlations define the analysis support. The corresponding variational problem encompasses several well-known regularizations such as the discrete total variation and the fused Lasso. Our main contributions consist in deriving sufficient conditions that guarantee exact or partial analysis support recovery of the true signal in presence of noise. More precisely, we give a sufficient condition to ensure that a signal is the unique solution of the l1 -analysis regularization in the noiseless case. The same condition also guarantees exact analysis support recovery and l2-robustness of the l1-analysis minimizer vis-à-vis an enough small noise in the measurements. This condition turns to be sharp for the robustness of the sign pattern. To show partial support recovery and l2 -robustness to an arbitrary bounded noise, we introduce a stronger sufficient condition. When specialized to the l1-synthesis regularization, our results recover some corresponding recovery and robustness guarantees previously known in the literature. From this perspective, our work is a generalization of these results. We finally illustrate these theoretical findings on several examples to study the robustness of the 1-D total variation, shift-invariant Haar dictionary, and fused Lasso regularizations.
  • Keywords
    inverse problems; minimisation; signal processing; 1D total variation; discrete total variation; exact analysis support recovery; fused Lasso regularizations; general analysis regularization; l1 norm; l1-analysis minimizer vis-à-vis; l1-analysis regularization; l1-synthesis regularization; l2-robustness; linear inverse problems; partial analysis support recovery; robust sparse analysis regularization; shift-invariant Haar dictionary; sparse synthesis; Dictionaries; Integrated circuits; Inverse problems; Noise; Noise robustness; Robustness; Vectors; $ell^{1}$-minimization; Analysis regularization; fused Lasso; inverse problems; noise robustness; sparsity; synthesis regularization; total variation (TV); union of subspaces; wavelets;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.2012.2233859
  • Filename
    6380620