Title :
Group-Sparse Signal Denoising: Non-Convex Regularization, Convex Optimization
Author :
Po-Yu Chen ; Selesnick, I.W.
Author_Institution :
Dept. of Electr. & Comput. Eng., New York Univ., New York, NY, USA
Abstract :
Convex optimization with sparsity-promoting convex regularization is a standard approach for estimating sparse signals in noise. In order to promote sparsity more strongly than convex regularization, it is also standard practice to employ non-convex optimization. In this paper, we take a third approach. We utilize a non-convex regularization term chosen such that the total cost function (consisting of data consistency and regularization terms) is convex. Therefore, sparsity is more strongly promoted than in the standard convex formulation, but without sacrificing the attractive aspects of convex optimization (unique minimum, robust algorithms, etc.). We use this idea to improve the recently developed `overlapping group shrinkage´ (OGS) algorithm for the denoising of group-sparse signals. The algorithm is applied to the problem of speech enhancement with favorable results in terms of both SNR and perceptual quality.
Keywords :
concave programming; signal denoising; convex optimization; group sparse signal denoising; nonconvex regularization; overlapping group shrinkage algorithm; sparsity promoting convex regularization; speech enhancement; Convex functions; Cost function; Noise; Noise reduction; Signal processing algorithms; Vectors; Convex optimization; denoising; group sparse model; non-convex optimization; sparse optimization; speech enhancement; translation-invariant denoising;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2014.2329274