Independent Component Analysis is a popular statistical method for separating a multivariate signal into additive components. It has been shown that the signal separation problem can be reduced to the joint diagonalization of the matrix slices of some higher-order cumulants of the signal. In this approach, the unknown mixing matrix can be computed directly from the obtained joint diagonalizer. Various iterative algorithms for solving the non-convex joint diagonalization problem exist, but they usually lack global optimality guarantees. In this paper, we introduce a procedure for computing an optimality gap for local optimal solutions. The optimality gap is then used to obtain an empirical error bound for the estimated mixing matrix. Finally...
The one-bit-matching conjecture for independent component analysis (ICA) has been widely believed in...
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
The thesis deals with several problems in blind separation of linear mixture of unknown sources usin...
Independent Component Analysis is a popular statistical method for separating a multivariate signal ...
In this thesis, employing the theory of matrix Lie groups, we develop gradient based flows for the p...
We present a new scale-invariant cost function for non-orthogonal joint-diagonalization of a set of ...
The Joint Diagonalization of a set of matrices by Congruence (JDC) appears in a number of signal pro...
In this thesis, employing the theory of matrix Lie groups, we develop gradient based flows for the p...
International audienceIn this paper, we focus on the Joint Diagonalization by Congruence (JDC) decom...
International audienceWe study optimization methods for solving the maximum likelihood formulation o...
Abstract. This paper derives a new algorithm that performs independent component analysis (ICA) by o...
In this paper a multivariate contrast function is proposed for the blind signal extraction of a sub...
We present a new algorithm for Independent Component Analysis (ICA) which has provable performance g...
We present a new algorithm for independent component analysis which has provable performance guarant...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
The one-bit-matching conjecture for independent component analysis (ICA) has been widely believed in...
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
The thesis deals with several problems in blind separation of linear mixture of unknown sources usin...
Independent Component Analysis is a popular statistical method for separating a multivariate signal ...
In this thesis, employing the theory of matrix Lie groups, we develop gradient based flows for the p...
We present a new scale-invariant cost function for non-orthogonal joint-diagonalization of a set of ...
The Joint Diagonalization of a set of matrices by Congruence (JDC) appears in a number of signal pro...
In this thesis, employing the theory of matrix Lie groups, we develop gradient based flows for the p...
International audienceIn this paper, we focus on the Joint Diagonalization by Congruence (JDC) decom...
International audienceWe study optimization methods for solving the maximum likelihood formulation o...
Abstract. This paper derives a new algorithm that performs independent component analysis (ICA) by o...
In this paper a multivariate contrast function is proposed for the blind signal extraction of a sub...
We present a new algorithm for Independent Component Analysis (ICA) which has provable performance g...
We present a new algorithm for independent component analysis which has provable performance guarant...
Independent Components Analysis finds a linear transformation to variables which are maximally stati...
The one-bit-matching conjecture for independent component analysis (ICA) has been widely believed in...
International audienceA comparative study of approximate joint diagonalization algorithms of a set o...
The thesis deals with several problems in blind separation of linear mixture of unknown sources usin...