International audienceApproximate Joint Diagonalization of a matrix set can solve the linear Blind Source Separation problem. If the data possesses a bilinear structure, for example a spatio-temporal structure, transformations such as tensor decomposition can be applied. In this paper we show how the linear and bilinear joint diagonalization can be applied for extracting sources according to a composite model where some of the sources have a linear structure and other a bilinear structure. This is the case of Event Related Potentials (ERPs). The proposed model achieves higher performance in term of shape and robustness for the estimation of ERP sources in a Brain Computer Interface experiment
Cette thèse traite de l'étude de méthodes de diagonalisation conjointe de matrices complexes, en vue...
Cette thèse présente de nouveaux algorithmes de diagonalisation conjointe par similitude. Cesalgorit...
International audienceThe problem of Blind Identification of linear mixtures of independent random pr...
The approximate joint diagonalisation of a set of matrices allows the solution of the blind source s...
Blind source separation (BSS) is a well-known signal processing tool which is used to solve practica...
National audienceIn this article, we consider the dimension reduction problem in the context of blin...
In this paper we present a new method for separating non-stationary sources from their convolutive m...
International audienceThe separation of Electroencephalography (EEG) sources is a typical applicatio...
Recently a blind source separation model was suggested for spatial data together with an estimator b...
This thesis deals with the study of joint diagonalization of complex matrices methods for source sep...
In this thesis, we study the problem of the blind separation of over-determined linear convolutive r...
PhD ThesisBlind Source Separation (BSS) attempts to automatically extract and track a signal of inte...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
Abstract—The singular value decomposition C = UΛVT is among the most useful and widespread tools in ...
International audienceThis letter proposes a novel technique for the blind separation of autoregress...
Cette thèse traite de l'étude de méthodes de diagonalisation conjointe de matrices complexes, en vue...
Cette thèse présente de nouveaux algorithmes de diagonalisation conjointe par similitude. Cesalgorit...
International audienceThe problem of Blind Identification of linear mixtures of independent random pr...
The approximate joint diagonalisation of a set of matrices allows the solution of the blind source s...
Blind source separation (BSS) is a well-known signal processing tool which is used to solve practica...
National audienceIn this article, we consider the dimension reduction problem in the context of blin...
In this paper we present a new method for separating non-stationary sources from their convolutive m...
International audienceThe separation of Electroencephalography (EEG) sources is a typical applicatio...
Recently a blind source separation model was suggested for spatial data together with an estimator b...
This thesis deals with the study of joint diagonalization of complex matrices methods for source sep...
In this thesis, we study the problem of the blind separation of over-determined linear convolutive r...
PhD ThesisBlind Source Separation (BSS) attempts to automatically extract and track a signal of inte...
Sparse signal recovery and dictionary learning methods have found a vast number of applications incl...
Abstract—The singular value decomposition C = UΛVT is among the most useful and widespread tools in ...
International audienceThis letter proposes a novel technique for the blind separation of autoregress...
Cette thèse traite de l'étude de méthodes de diagonalisation conjointe de matrices complexes, en vue...
Cette thèse présente de nouveaux algorithmes de diagonalisation conjointe par similitude. Cesalgorit...
International audienceThe problem of Blind Identification of linear mixtures of independent random pr...