Cataloged from PDF version of article.In most compressive sensing problems, 1 norm is used during the signal reconstruction process. In this article, a modified version of the entropy functional is proposed to approximate the 1 norm. The proposed modified version of the entropy functional is continuous, differentiable and convex. Therefore, it is possible to construct globally convergent iterative algorithms using Bregman’s row-action method for compressive sensing applications. Simulation examples with both 1D signals and images are presented. © 2013 Elsevier Inc. All rights reserved
AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential t...
Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that nois...
Compressive sensing (CS) aims at reconstructing high dimensional data from a small number of samples...
Compressive Sensing (CS) ensures the reconstruction of a sparse signal from a set of linear measure...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
The theory Compressive Sensing (CS) has provided a newacquisition strategy and recovery with good in...
Compressive sensing achieves effective dimensionality reduc-tion of signals, under a sparsity constr...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquisition of sparse or ...
Abstract—Compressive sensing is a new signal acquisition tech-nology with the potential to reduce th...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
International audienceIn this paper, following the Compressed Sensing paradigm, we study the problem...
Compressive sensing (CS) is a new sampling theory which allows reconstructing signals using sub-Nyqu...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
Nowadays, there is an increasing amount of digital information constantly generated from every aspec...
AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential t...
Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that nois...
Compressive sensing (CS) aims at reconstructing high dimensional data from a small number of samples...
Compressive Sensing (CS) ensures the reconstruction of a sparse signal from a set of linear measure...
This thesis deals with an emerging area of signal processing, called Compressive Sensing (CS), that ...
Compressive Sensing, as an emerging technique in signal processing is reviewed in this paper togethe...
The theory Compressive Sensing (CS) has provided a newacquisition strategy and recovery with good in...
Compressive sensing achieves effective dimensionality reduc-tion of signals, under a sparsity constr...
Compressive sensing (CS) is an alternative to Shannon/Nyquist sampling for acquisition of sparse or ...
Abstract—Compressive sensing is a new signal acquisition tech-nology with the potential to reduce th...
•Compressive sensing (CS) is a sampling strategy for signals that are sparse in an arbitrary orthono...
International audienceIn this paper, following the Compressed Sensing paradigm, we study the problem...
Compressive sensing (CS) is a new sampling theory which allows reconstructing signals using sub-Nyqu...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
Nowadays, there is an increasing amount of digital information constantly generated from every aspec...
AbstractRecent theoretical developments in the area of compressive sensing (CS) have the potential t...
Existing convex relaxation-based approaches to reconstruction in compressed sensing assume that nois...
Compressive sensing (CS) aims at reconstructing high dimensional data from a small number of samples...