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Article Dans Une Revue IEEE Transactions on Signal Processing Année : 2016

Bayesian anti-sparse coding

Résumé

Sparse representations have proven their efficiency in solving a wide class of inverse problems encountered in signal and image processing. Conversely, enforcing the information to be spread uniformly over representation coefficients exhibits relevant properties in various applications such as robust encoding in digital communications. Anti-sparse regularization can be naturally expressed through an ∞-norm penalty. This paper derives a probabilistic formulation of such representations. A new probability distribution, referred to as the democratic prior, is first introduced. Its main properties as well as three random variate generators for this distribution are derived. Then this probability distribution is used as a prior to promote anti-sparsity in a Gaussian linear model, yielding a fully Bayesian formulation of anti-sparse coding. Two Markov chain Monte Carlo (MCMC) algorithms are proposed to generate samples according to the posterior distribution. The first one is a standard Gibbs sampler. The second one uses Metropolis-Hastings moves that exploit the proximity mapping of the log-posterior distribution. These samples are used to approximate maximum a posteriori and minimum mean square error estimators of both parameters and hyperparameters. Simulations on synthetic data illustrate the performances of the two proposed samplers, for both complete and over-complete dictionaries. All results are compared to the recent deterministic variational FITRA algorithm.
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Dates et versions

hal-01433706 , version 1 (12-01-2017)

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Clément Elvira, Pierre Chainais, Nicolas Dobigeon. Bayesian anti-sparse coding. IEEE Transactions on Signal Processing, 2016, ⟨10.1109/TSP.2016.2645543⟩. ⟨hal-01433706⟩
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