In many practical problems for data mining the data X under consideration (given as (m × N)-matrix) is of the form X = AS, where the matrices A and S with dimensions m×n and n × N respectively (often called mixing matrix or dictionary and source matrix) are unknown (m ≤ n < N). We formulate conditions (SCA-conditions) under which we can recover A and S uniquely (up to scaling and permutation), such that S is sparse in the sense that each column of S has at least one zero element. We call this the Sparse Component Analysis problem (SCA). We present new algorithms for identification of the mixing matrix (under SCA-conditions), and for source recovery (under identifiability conditions). The methods are illustrated with examples showing good p...
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...
The method of sparse component analysis in general has two steps: the first step is to identify the ...
We consider the following sparse representation problem, which is called Sparse Component Analysis: ...
In this paper we propose a new algorithm for identifying mixing (basis) matrix A knowing only sensor...
We present general sparseness theorems showing that the solutions of various types least square and ...
International audienceOne of the major problems in underdetermined Sparse Component Analysis (SCA) i...
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...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
In this work, we investigate the use of a multimodal search framework to deal with a representative ...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
Abstract—In this paper, we use a two-stage sparse factorization approach for blindly estimating the ...
The method of sparse component analysis in general has two steps: the first step is to identify the ...
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...
The method of sparse component analysis in general has two steps: the first step is to identify the ...
We consider the following sparse representation problem, which is called Sparse Component Analysis: ...
In this paper we propose a new algorithm for identifying mixing (basis) matrix A knowing only sensor...
We present general sparseness theorems showing that the solutions of various types least square and ...
International audienceOne of the major problems in underdetermined Sparse Component Analysis (SCA) i...
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...
Sparse component analysis (SCA) is a popular method for addressing underdetermined blind source sepa...
In this work, we investigate the use of a multimodal search framework to deal with a representative ...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
Abstract—In this paper, we use a two-stage sparse factorization approach for blindly estimating the ...
The method of sparse component analysis in general has two steps: the first step is to identify the ...
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...
The method of sparse component analysis in general has two steps: the first step is to identify the ...