Title :
Sparse Bayesian regularization using Bernoulli-Laplacian priors
Author :
Chaari, Lamia ; Tourneret, Jean-Yves ; Batatia, Hadj
Author_Institution :
IRIT - INP-ENSEEIHT, Univ. of Toulouse, Toulouse, France
Abstract :
Sparse regularization has been receiving an increasing interest in the literature. Two main difficulties are encountered when performing sparse regularization. The first one is how to fix the parameters involved in the regularization algorithm. The second one is to optimize the inherent cost function that is generally non differentiable, and may also be non-convex if one uses for instance an ℓ0 penalization. In this paper, we handle these two problems jointly and propose a novel algorithm for sparse Bayesian regularization. An interesting property of this algorithm is the possibility of estimating the regularization parameters from the data. Simulation performed with 1D and 2D restoration problems show the very promising potential of the proposed approach. An application to the reconstruction of electroencephalographic signals is finally investigated.
Keywords :
Bayes methods; electroencephalography; medical signal processing; parameter estimation; signal reconstruction; signal restoration; ℓ0 penalization; 1D restoration problem; 2D restoration problem; Bernoulli-Laplacian prior; electroencephalographic signal reconstruction; inherent cost function; parameter estimation; sparse Bayesian regularization; Bayes methods; Brain modeling; Cost function; Electroencephalography; Image reconstruction; Image restoration; Signal to noise ratio; ℓ0 + ℓ1 regularization; MCMC methods; Sparse Bayesian restoration; parameter estimation;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2013 Proceedings of the 21st European
Conference_Location :
Marrakech