Title :
Non-convex priors in Bayesian compressed sensing
Author :
Derin Babacan, S. ; Mancera, Luis ; Molina, Rafael ; Katsaggelos, Aggelos K.
Author_Institution :
Dept. Electr. Eng. & Comput. Sci., Northwestern Univ., Evanston, IL, USA
Abstract :
We propose a novel Bayesian formulation for the reconstruction from compressed measurements. We demonstrate that high-sparsity enforcing priors based on lp-norms, with 0 <; p ≤ 1, can be used within a Bayesian framework by majorization-minimization methods. By employing a fully Bayesian analysis of the compressed sensing system and a variational Bayesian analysis for inference, the proposed framework provides model parameter estimates along with the unknown signal, as well as the uncertainties of these estimates. We also show that some existing methods can be derived as special cases of the proposed framework. Experimental results demonstrate the high performance of the proposed algorithm in comparison with commonly used methods for compressed sensing recovery.
Keywords :
Bayes methods; compressed sensing; concave programming; minimisation; parameter estimation; signal reconstruction; Bayesian compressed sensing; Bayesian formulation; compressed measurement reconstruction; compressed sensing recovery; high-sparsity enforcing priors; inference; lp-norms; majorization-minimization methods; model parameter estimation; nonconvex priors; unknown signal; variational Bayesian analysis; Approximation methods; Bayes methods; Compressed sensing; Image reconstruction; Minimization; Noise measurement; Vectors;
Conference_Titel :
Signal Processing Conference, 2009 17th European
Conference_Location :
Glasgow
Print_ISBN :
978-161-7388-76-7