Title :
Iteratively Reweighted
Approaches to Sparse Composite Regularization
Author :
Ahmad, Rizwan ; Schniter, Philip
Author_Institution :
Dept. of Electr. & Comput. Eng., Ohio State Univ., Columbus, OH, USA
Abstract :
Motivated by the observation that a given signal x admits sparse representations in multiple dictionaries Ψd but with varying levels of sparsity across dictionaries, we propose two new algorithms for the reconstruction of (approximately) sparse signals from noisy linear measurements. Our first algorithm, Co-L1, extends the well-known lasso algorithm from the L1 regularizer ∥Ψx∥1 to composite regularizers of the form Σd λd ∥Ψdx1 while self-adjusting the regularization weights λd. Our second algorithm, Co-IRW-L1, extends the well-known iteratively reweighted L1 algorithm to the same family of composite regularizers. We provide several interpretations of both algorithms: 1) majorization-minimization (MM) applied to a nonconvex log-sum-type penalty; 2) MM applied to an approximate Bo-type penalty; 3) MM applied to Bayesian MAP inference under a particular hierarchical prior; and 4) variational expectation maximization (VEM) under a particular prior with deterministic unknown parameters. A detailed numerical study suggests that our proposed algorithms yield significantly improved recovery SNR when compared to their noncomposite L1 and IRW-L1 counterparts.
Keywords :
approximation theory; belief networks; concave programming; expectation-maximisation algorithm; image representation; inference mechanisms; Bayesian MAP inference; VEM; approximate Bo-type penalty; composite regularizers; iteratively reweighted ℓ1 approach; lasso algorithm; majorization-minimization; multiple dictionaries; nonconvex log-sum-type penalty; sparse composite regularization; sparse representations; variational expectation maximization; AWGN; Approximation algorithms; Bayes methods; Convergence; Image reconstruction; Inference algorithms; Optimization; Bayesian methods; composite regularization; iterative reweighting algorithms; majorization minimization; sparse optimization; variational inference;
Journal_Title :
Computational Imaging, IEEE Transactions on
DOI :
10.1109/TCI.2015.2485078