International audienceSolving a Source separation problem using a maximum likelihood approach offers the possibility to encode, in addition to the mutual statistical independence of the sources, additional prior information on these signals by specifying their probability distribution functions. Such setting also corresponds to some specific choice of the non-linear functions in independent component analysis (ICA) algorithms based on non-linear decorrelation (See chap:1 of this book). The Bayesian inference strategy offers an additional flexibility by allowing to take into account the noise statistics and to account for prior information on the mixing coefficients. The purpose of this chapter is to present the Bayesian approach for source ...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
. In the preceding paper, Bayesian analysis was applied to the parameter estimation problem, given q...
This paper presents a Bayesian statistical framework for blind source separation that unifies other ...
This paper studied Bayesian algorithms for separating linear mixtures of spectral sources under non-...
International audienceThis paper addresses blind-source separation in the case where both the source...
This paper incorporates available prior knowledge of the source waveforms into the Bayesian approach...
Presented at MaxEnt00. Appeared in Bayesian Inference and Maximum Entropy Methods, Ali Mohammad-Djaf...
International audienceIn this paper we present an application of Bayesian non-negative source separa...
Abstract – Recent source separation work has described a model which assumes a nonzero overall mean ...
International audienceIn this work, we deal with source separation of linear - quadratic (LQ) and li...
This paper proposes a new analysis on two robust methods for solving the blind source separation pro...
In this paper, an introduction to Bayesian methods in signal processing will be given. The paper sta...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
. This communication deals with the source separation problem which consists in the separation of a ...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
. In the preceding paper, Bayesian analysis was applied to the parameter estimation problem, given q...
This paper presents a Bayesian statistical framework for blind source separation that unifies other ...
This paper studied Bayesian algorithms for separating linear mixtures of spectral sources under non-...
International audienceThis paper addresses blind-source separation in the case where both the source...
This paper incorporates available prior knowledge of the source waveforms into the Bayesian approach...
Presented at MaxEnt00. Appeared in Bayesian Inference and Maximum Entropy Methods, Ali Mohammad-Djaf...
International audienceIn this paper we present an application of Bayesian non-negative source separa...
Abstract – Recent source separation work has described a model which assumes a nonzero overall mean ...
International audienceIn this work, we deal with source separation of linear - quadratic (LQ) and li...
This paper proposes a new analysis on two robust methods for solving the blind source separation pro...
In this paper, an introduction to Bayesian methods in signal processing will be given. The paper sta...
In the basic signal model of blind source separation (BSS), an unknown linear mixing process is assu...
. This communication deals with the source separation problem which consists in the separation of a ...
Spectral data sets resulting from spectroscopy analysis of a multicomponent substance are a linear c...
Abstract — The paper presents experimental comparison of two approaches introduced for solving the n...
. In the preceding paper, Bayesian analysis was applied to the parameter estimation problem, given q...