In this correspondence, we propose a new Lagrange-dual reformulation associated with an l1 -norm minimization problem for sparse signal reconstruction. There are two main advantages of our proposed approach. First, the number of the variables in the reformulated optimization problem is much smaller than that in the original problem when the dimension of measurement vector is much less than the size of the original signals; Second, the new problem is smooth and convex, and hence it can be solved by many state of the art gradient-type algorithms efficiently. The efficiency and performance of the proposed algorithm are validated via theoretical analysis as well as some illustrative numerical examples
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...
In the reconstruction of sparse signals in compressed sensing, the reconstruction algorithm is requi...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
The smoothed l0 norm algorithm is a reconstruction algorithm in compressive sensing based on approxi...
We propose recovering 1D piecewice linear signal using a sparsity-based method consisting of two ste...
In this paper we propose a new approach of the compressive sensing (CS) reconstruction problem based...
The purpose of this paper is to give a brief overview of the main results for sparse recovery via L ...
We address the problem of finding a set of sparse signals that have nonzero coefficients in the same...
Sparse signals can be recovered from a reduced set of samples by using compressive sensing algorithm...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
International audienceWe propose a method to reconstruct sparse signals degraded by a nonlinear dist...
This paper is about solving an optimization problem for a sparse solution. Given a matrix A and a ve...
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...
In the reconstruction of sparse signals in compressed sensing, the reconstruction algorithm is requi...
Many problems in signal processing and statistical inference are based on finding a sparse solution ...
The smoothed l0 norm algorithm is a reconstruction algorithm in compressive sensing based on approxi...
We propose recovering 1D piecewice linear signal using a sparsity-based method consisting of two ste...
In this paper we propose a new approach of the compressive sensing (CS) reconstruction problem based...
The purpose of this paper is to give a brief overview of the main results for sparse recovery via L ...
We address the problem of finding a set of sparse signals that have nonzero coefficients in the same...
Sparse signals can be recovered from a reduced set of samples by using compressive sensing algorithm...
An algorithmic framework, based on the difference of convex functions algorithm, is proposed for min...
This paper develops an algorithm for finding sparse signals from limited observations of a linear sy...
International audienceWe propose a method to reconstruct sparse signals degraded by a nonlinear dist...
This paper is about solving an optimization problem for a sparse solution. Given a matrix A and a ve...
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
The classical Shannon Nyquist theorem tells us that, the number of samples required for a signal to ...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...