International audienceIn this paper, a new algorithm for Sparse Component Analysis (SCA) in the noisy underdetermined case (i.e., with more sources than sensors) is presented. The solution obtained by the proposed algorithm is compared to the minimum l1 -norm solution achieved by Linear Programming (LP). Simulation results show that the proposed algorithm is approximately 10 dB better than the LP method with respect to the quality of the estimated sources. It is due to optimality of our solution (in the MAP sense) for source recovery in noisy underdetermined sparse component analysis in the case of spiky model for sparse sources and Gaussian noise
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...
Abstract. In this paper, a new algorithm for source recovery in under-determined Sparse Component An...
Series: Lecture Notes in Computer Science Subseries: Information Systems and Applications, incl. Int...
International audienceWe present a Bayesian approach for Sparse Component Analysis (SCA) in the nois...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
We present general sparseness theorems showing that the solutions of various types least square and ...
Abstract. We introduce a new iterative algorithm for Sparse Component Analysis (SCA). The algorithm,...
International audienceOne of the major problems in underdetermined Sparse Component Analysis (SCA) i...
In this paper we propose a new algorithm for identifying mixing (basis) matrix A knowing only sensor...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...
Abstract. In this paper, a new algorithm for source recovery in under-determined Sparse Component An...
Series: Lecture Notes in Computer Science Subseries: Information Systems and Applications, incl. Int...
International audienceWe present a Bayesian approach for Sparse Component Analysis (SCA) in the nois...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
We present general sparseness theorems showing that the solutions of various types least square and ...
Abstract. We introduce a new iterative algorithm for Sparse Component Analysis (SCA). The algorithm,...
International audienceOne of the major problems in underdetermined Sparse Component Analysis (SCA) i...
In this paper we propose a new algorithm for identifying mixing (basis) matrix A knowing only sensor...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
A central objective in signal processing is to infer meaningful information from a set of measuremen...
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
International audienceIn this survey, we highlight the appealing features and challenges of Sparse C...
Research Doctorate - Doctor of Philosophy (PhD)A vector is called sparse when most of its components...