This paper proposes a novel neural-network approach to blind source separation in nonlinear mixture. The approach utilizes a radial basis function (RBF) neural-network to approximate the inverse of the nonlinear mixing mapping which is assumed to exist and able to be approximated using an RBF network. A contrast function which consists of the mutual information and partial moments of the outputs of the separation system, is defined to separate the nonlinear mixture. The minimization of the contrast function results in the independence of the outputs with desirable moments such that the original sources are separated properly. Two learning algorithms for the parametric RBF network are developed by using the stochastic gradient descent method...
International audienceThis paper presents a new adaptive procedure for the linear and non-linear sep...
A network structure and its learning algorithm have been proposed for blind source separation applie...
While most reported blind source separation methods concern linear mixtures, we here address the non...
A neural-based method for source separation in nonlinear mixture is proposed in this paper. A cost f...
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
Nonlinear blind signal separation is an important but rather difficult problem. Any general nonlinea...
In this paper, a two--layer neural network is presented that organizes itself to perform blind sourc...
A network structure and its learning algorithm have been proposed for blind source separation applie...
There has been a surge of interest in blind source separation (BSS) because of its potential applica...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
Abstract—Demixing independent source signals from their nonlinear mixtures is a very important issue...
This paper presents a new method for Blind Source Separation (BSS) based on dual adaptive control, w...
We propose an Equivariant Kernel Nonlinear Separation (EKENS) learning algorithm to extract independ...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This paper deals with the problem of blind identification and source separation which consists of es...
International audienceThis paper presents a new adaptive procedure for the linear and non-linear sep...
A network structure and its learning algorithm have been proposed for blind source separation applie...
While most reported blind source separation methods concern linear mixtures, we here address the non...
A neural-based method for source separation in nonlinear mixture is proposed in this paper. A cost f...
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
Nonlinear blind signal separation is an important but rather difficult problem. Any general nonlinea...
In this paper, a two--layer neural network is presented that organizes itself to perform blind sourc...
A network structure and its learning algorithm have been proposed for blind source separation applie...
There has been a surge of interest in blind source separation (BSS) because of its potential applica...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
Abstract—Demixing independent source signals from their nonlinear mixtures is a very important issue...
This paper presents a new method for Blind Source Separation (BSS) based on dual adaptive control, w...
We propose an Equivariant Kernel Nonlinear Separation (EKENS) learning algorithm to extract independ...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This paper deals with the problem of blind identification and source separation which consists of es...
International audienceThis paper presents a new adaptive procedure for the linear and non-linear sep...
A network structure and its learning algorithm have been proposed for blind source separation applie...
While most reported blind source separation methods concern linear mixtures, we here address the non...