International audienceThis paper addresses blind-source separation in the case where both the source signals and the mixing coefficients are non-negative. The problem is referred to as non-negative source separation and the main application concerns the analysis of spectrometric data sets. The separation is performed in a Bayesian framework by encoding non-negativity through the assignment of Gamma priors on the distributions of both the source signals and the mixing coefficients. A Markov chain Monte Carlo (MCMC) sampling procedure is proposed to simulate the resulting joint posterior density from which marginal posterior mean estimates of the source signals and mixing coefficients are obtained. Results obtained with synthetic and experime...
Blind source separation attempts to recover independent sources which have been linearly mixed to pr...
[[abstract]]Most independent component analysis methods for blind source separation rely on the fund...
International audienceNon-negative blind source separation (BSS) has raised interest in various fiel...
International audienceThis paper addresses blind-source separation in the case where both the source...
International audienceIn this paper we present an application of Bayesian non-negative source separa...
This paper studied Bayesian algorithms for separating linear mixtures of spectral sources under non-...
International audienceSolving a Source separation problem using a maximum likelihood approach offers...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Abstract – Recent source separation work has described a model which assumes a nonzero overall mean ...
This paper presents a Bayesian statistical framework for blind source separation that unifies other ...
International audienceIn this work, we deal with source separation of linear - quadratic (LQ) and li...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
International audienceWe propose two methods for separating mixture of independent sources without a...
This paper presents an original method for the analysis of multicomponent spectral data sets. The pr...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Blind source separation attempts to recover independent sources which have been linearly mixed to pr...
[[abstract]]Most independent component analysis methods for blind source separation rely on the fund...
International audienceNon-negative blind source separation (BSS) has raised interest in various fiel...
International audienceThis paper addresses blind-source separation in the case where both the source...
International audienceIn this paper we present an application of Bayesian non-negative source separa...
This paper studied Bayesian algorithms for separating linear mixtures of spectral sources under non-...
International audienceSolving a Source separation problem using a maximum likelihood approach offers...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Abstract – Recent source separation work has described a model which assumes a nonzero overall mean ...
This paper presents a Bayesian statistical framework for blind source separation that unifies other ...
International audienceIn this work, we deal with source separation of linear - quadratic (LQ) and li...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
International audienceWe propose two methods for separating mixture of independent sources without a...
This paper presents an original method for the analysis of multicomponent spectral data sets. The pr...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Blind source separation attempts to recover independent sources which have been linearly mixed to pr...
[[abstract]]Most independent component analysis methods for blind source separation rely on the fund...
International audienceNon-negative blind source separation (BSS) has raised interest in various fiel...