The marginal entropy h(Z) of a weighted sum of two variables Z = alpha X + beta Y, expressed as a function of its weights, is a usual cost function for blind source separation (BSS), and more precisely for independent component analysis (ICA). Even if some theoretical investigations were done about the relevance from the BSS point of view of the global minimum of h(Z), very little is known about possible local spurious minima. In order to analyze the global shape of this entropy as a function of the weights, its analytical expression is derived in the ideal case of independent variables. Because of the ICA assumption that distributions are unknown, simulation results are used to show how and when local spurious minima may appear. Firstly, t...
In blind source separation problem it is usually assumed that the source signals are mutually indepe...
The marginal entropy hZ of a weighted sum of two variables Z aX bY ; expressed as a func.C&ap...
For the separation of linear instantaneous mixtures of independent sources, many Independent Compone...
The marginal entropy h(Z) of a weighted sum of two variables Z = alpha X + beta Y, expressed as a fu...
Marginal entropy can be used as cost function for blind source separation (BSS). Recently, some auth...
Abstract—In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the...
The source separation problem is usually solved through a gradient descent on a cost function C . Ho...
In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the viewpoin...
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 ...
International audienceThis work deals with the problem of blind source separation solved by minimiza...
International audienceThis article deals with the problem of blind source separation in the case of ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
We analyze blind separation of independent sources in the face of additive noise. The analysis is ca...
A basic approach to blind source separation is to define an index representing the statistical depen...
In blind source separation problem it is usually assumed that the source signals are mutually indepe...
The marginal entropy hZ of a weighted sum of two variables Z aX bY ; expressed as a func.C&ap...
For the separation of linear instantaneous mixtures of independent sources, many Independent Compone...
The marginal entropy h(Z) of a weighted sum of two variables Z = alpha X + beta Y, expressed as a fu...
Marginal entropy can be used as cost function for blind source separation (BSS). Recently, some auth...
Abstract—In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the...
The source separation problem is usually solved through a gradient descent on a cost function C . Ho...
In this paper, both non-mixing and mixing local minima of the entropy are analyzed from the viewpoin...
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 ...
International audienceThis work deals with the problem of blind source separation solved by minimiza...
International audienceThis article deals with the problem of blind source separation in the case of ...
ABSTRACT We present a new approach to the blind source separation problem (BSS, also known as Indepe...
We analyze blind separation of independent sources in the face of additive noise. The analysis is ca...
A basic approach to blind source separation is to define an index representing the statistical depen...
In blind source separation problem it is usually assumed that the source signals are mutually indepe...
The marginal entropy hZ of a weighted sum of two variables Z aX bY ; expressed as a func.C&ap...
For the separation of linear instantaneous mixtures of independent sources, many Independent Compone...