This paper addresses signal denoising when large-amplitude coefficients form clusters (groups). The L1-norm and other separable sparsity models do not capture the tendency of coefficients to cluster (group sparsity). This work develops an algorithm, called ‘overlapping group shrinkage ’ (OGS), based on the min-imization of a convex cost function involving a group-sparsity promoting penalty function. The groups are fully overlapping so the denoising method is translation-invariant and blocking artifacts are avoided. Based on the principle of majorization-minimization (MM), we derive a simple iterative minimization algorithm that reduces the cost function monotonically. A procedure for setting the regularization parameter, based on attenuatin...
Abstract—The scalar shrinkage-thresholding operator is a key ingredient in variable selection algori...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
AbstractStructured sparsity approaches have recently received much attention in the statistics, mach...
This paper addresses signal denoising when large-amplitude coefficients form clusters (groups). The ...
Abstract—This paper addresses signal denoising when large-amplitude coefficients form clusters (grou...
Abstract—Convex optimization with sparsity-promoting con-vex regularization is a standard approach f...
In this work a new thresholding function referred to as ’mixture model shrinkage’ (MMS) based on the...
International audienceWe consider the audio declipping problem by using iterative thresholding algor...
This paper introduces a novel and versatile group sparsity prior for denoising and to regularize inv...
This paper describes an extension to total variation denoising wherein it is assumed the first-order...
In this paper, we modify the Sparse Coding Shrinkage (SCS) method with an appropriate optimal linear...
Non-negative matrix factorisations are used in several branches of signal processing and data analys...
International audienceSparse and structured signal expansions on dictionaries can be obtained throug...
Matching Pursuit (MP) is a greedy algorithm that iteratively builds a sparse signal representation. ...
Abstract Group sparsity has shown great potential in various low-level vision tasks (e.g, image den...
Abstract—The scalar shrinkage-thresholding operator is a key ingredient in variable selection algori...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
AbstractStructured sparsity approaches have recently received much attention in the statistics, mach...
This paper addresses signal denoising when large-amplitude coefficients form clusters (groups). The ...
Abstract—This paper addresses signal denoising when large-amplitude coefficients form clusters (grou...
Abstract—Convex optimization with sparsity-promoting con-vex regularization is a standard approach f...
In this work a new thresholding function referred to as ’mixture model shrinkage’ (MMS) based on the...
International audienceWe consider the audio declipping problem by using iterative thresholding algor...
This paper introduces a novel and versatile group sparsity prior for denoising and to regularize inv...
This paper describes an extension to total variation denoising wherein it is assumed the first-order...
In this paper, we modify the Sparse Coding Shrinkage (SCS) method with an appropriate optimal linear...
Non-negative matrix factorisations are used in several branches of signal processing and data analys...
International audienceSparse and structured signal expansions on dictionaries can be obtained throug...
Matching Pursuit (MP) is a greedy algorithm that iteratively builds a sparse signal representation. ...
Abstract Group sparsity has shown great potential in various low-level vision tasks (e.g, image den...
Abstract—The scalar shrinkage-thresholding operator is a key ingredient in variable selection algori...
Denoising is often addressed via sparse coding with respect to an overcomplete dictionary. There are...
AbstractStructured sparsity approaches have recently received much attention in the statistics, mach...