Abstract—This paper addresses the problem of sparsity penal-ized least squares for applications in sparse signal processing, e.g. sparse deconvolution. This paper aims to induce sparsity more strongly than L1 norm regularization, while avoiding non-convex optimization. For this purpose, this paper describes the design and use of non-convex penalty functions (regularizers) constrained so as to ensure the convexity of the total cost function, F, to be minimized. The method is based on parametric penalty functions, the parameters of which are constrained to ensure convexity of F. It is shown that optimal parameters can be obtained by semidefinite programming (SDP). This maximally sparse convex (MSC) approach yields maximally non-convex sparsit...
International audienceThis paper deals with the problem of recovering a sparse unknown signal from a...
Abstract—Convex optimization with sparsity-promoting con-vex regularization is a standard approach f...
Sparsity-constrained optimization has wide applicability in machine learning, statistics, and signal...
Abstract—This paper addresses the problem of sparsity penal-ized least squares for applications in s...
International audienceThis paper considers the problem of recovering a sparse signal representation ...
This paper considers the problem of recovering a sparse signal representation according to a signal ...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
The use of sparsity has emerged in the last fifteen years as an important tool for solving many prob...
We propose recovering 1D piecewice linear signal using a sparsity-based method consisting of two ste...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
Consider reconstructing a signal x by minimizing a weighted sum of a convex differentiable negative ...
Summarization: Sparse multipath channels are wireless links commonly found in communication systems ...
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
A non-convex sparsity promoting penalty function, the transformed L1 (TL1), is studied in optimizati...
International audience—This paper is concerned with designing efficient algorithms for recovering sp...
International audienceThis paper deals with the problem of recovering a sparse unknown signal from a...
Abstract—Convex optimization with sparsity-promoting con-vex regularization is a standard approach f...
Sparsity-constrained optimization has wide applicability in machine learning, statistics, and signal...
Abstract—This paper addresses the problem of sparsity penal-ized least squares for applications in s...
International audienceThis paper considers the problem of recovering a sparse signal representation ...
This paper considers the problem of recovering a sparse signal representation according to a signal ...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
The use of sparsity has emerged in the last fifteen years as an important tool for solving many prob...
We propose recovering 1D piecewice linear signal using a sparsity-based method consisting of two ste...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
Consider reconstructing a signal x by minimizing a weighted sum of a convex differentiable negative ...
Summarization: Sparse multipath channels are wireless links commonly found in communication systems ...
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
A non-convex sparsity promoting penalty function, the transformed L1 (TL1), is studied in optimizati...
International audience—This paper is concerned with designing efficient algorithms for recovering sp...
International audienceThis paper deals with the problem of recovering a sparse unknown signal from a...
Abstract—Convex optimization with sparsity-promoting con-vex regularization is a standard approach f...
Sparsity-constrained optimization has wide applicability in machine learning, statistics, and signal...