Abstract—In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the viewpoint of blind source separation (BSS); they correspond respectively to acceptable and spurious solutions of the BSS problem. The contribution of this work is twofold. First, a Taylor development is used to show that the exact output entropy cost function has a non-mixing minimum when this output is proportional to any of the non-Gaussian sources, and not only when the output is proportional to the lowest entropic source. Second, in order to prove that mixing entropy minima exist when the source densities are strongly multimodal, an entropy approximator is proposed. The latter has the major advantage that an error bound can be provided. ...
International audienceRecently, some researchers have suggested Renyi's entropy in its general form ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
The blind source separation (BSS) problem is often solved by maximizing objective functions reflecti...
International audienceIn this paper, both non-mixing and mixing local minima of the entropy are anal...
The marginal entropy h(Z) of a weighted sum of two variables Z = alpha X + beta Y, expressed as a fu...
The source separation problem is usually solved through a gradient descent on a cost function C . Ho...
Marginal entropy can be used as cost function for blind source separation (BSS). Recently, some auth...
This paper presents two approaches for showing that spurious minima of the entropy may exist in the ...
In the recent years, Independent Component Analysis (ICA) has become a fundamental tool in adaptive ...
The minimum entropy or maximum likelihood estimation can be utilized in blind source separation prob...
In this contribution, we address the issue of Blind Source Separation (BSS) in non-Gaussian noise. W...
International audienceThis work deals with the problem of blind source separation solved by minimiza...
Recently, some researchers have suggested Rényi’s entropy in its general form as a blind source sepa...
Renyi's entropy can be used as a cost function for blind source separation (BSS). Previous works hav...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
International audienceRecently, some researchers have suggested Renyi's entropy in its general form ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
The blind source separation (BSS) problem is often solved by maximizing objective functions reflecti...
International audienceIn this paper, both non-mixing and mixing local minima of the entropy are anal...
The marginal entropy h(Z) of a weighted sum of two variables Z = alpha X + beta Y, expressed as a fu...
The source separation problem is usually solved through a gradient descent on a cost function C . Ho...
Marginal entropy can be used as cost function for blind source separation (BSS). Recently, some auth...
This paper presents two approaches for showing that spurious minima of the entropy may exist in the ...
In the recent years, Independent Component Analysis (ICA) has become a fundamental tool in adaptive ...
The minimum entropy or maximum likelihood estimation can be utilized in blind source separation prob...
In this contribution, we address the issue of Blind Source Separation (BSS) in non-Gaussian noise. W...
International audienceThis work deals with the problem of blind source separation solved by minimiza...
Recently, some researchers have suggested Rényi’s entropy in its general form as a blind source sepa...
Renyi's entropy can be used as a cost function for blind source separation (BSS). Previous works hav...
Abstract—A method to perform convolutive blind source sep-aration of super-Gaussian sources by minim...
International audienceRecently, some researchers have suggested Renyi's entropy in its general form ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
The blind source separation (BSS) problem is often solved by maximizing objective functions reflecti...