This paper proposes the blind separation of complex signals using a novel neural network architecture based on an adaptive nonlinear bi-dimensional activation function (AF); the separation is obtained maximizing the output joint entropy. Avoiding the restriction due to the Louiville's theorem, the AF is composed of a couple of bi-dimensional spline functions, one for the real and one for the imaginary part of the signal. The surface of this function is flexible and it is adaptively modified according to the learning process performed by a gradient-based technique. The use of the bi-dimensional spline defines a new class of flexible AFs which are bounded and locally analytic. This paper aims to demonstrate that this novel bi-dimensional comp...
Novel on--line learning algorithms with self adaptive learning rates (parameters) for blind separati...
In blind source separation, convergence and separation performances are highly dependent on a relati...
A parameterized threshold nonlinearity, which separates a mixture of signals with any distribution (...
In this paper a natural gradient approach to blind source separation in complex environment is prese...
One of the main matter in Blind Source Separation (BSS) performed with a neural network approach is ...
This paper introduces a novel approach of Blind Separation in complex environment based on bi-dimens...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This chapter aims at introducing an Independent Component Analysis (ICA) approach to the separation ...
In this paper, neural networks based on an adaptive nonlinear function suitable for both blind compl...
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
A new on-line learning algorithm which minimizes a statistical de-pendency among outputs is derived ...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
Nonlinear blind signal separation is an important but rather difficult problem. Any general nonlinea...
This paper presents a new method for Blind Source Separation (BSS) based on dual adaptive control, w...
Novel on--line learning algorithms with self adaptive learning rates (parameters) for blind separati...
In blind source separation, convergence and separation performances are highly dependent on a relati...
A parameterized threshold nonlinearity, which separates a mixture of signals with any distribution (...
In this paper a natural gradient approach to blind source separation in complex environment is prese...
One of the main matter in Blind Source Separation (BSS) performed with a neural network approach is ...
This paper introduces a novel approach of Blind Separation in complex environment based on bi-dimens...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This chapter aims at introducing an Independent Component Analysis (ICA) approach to the separation ...
In this paper, neural networks based on an adaptive nonlinear function suitable for both blind compl...
n this paper a new neural network model for blind demixing of nonlinear mixtures is proposed. We add...
A new on-line learning algorithm which minimizes a statistical de-pendency among outputs is derived ...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
Nonlinear blind signal separation is an important but rather difficult problem. Any general nonlinea...
This paper presents a new method for Blind Source Separation (BSS) based on dual adaptive control, w...
Novel on--line learning algorithms with self adaptive learning rates (parameters) for blind separati...
In blind source separation, convergence and separation performances are highly dependent on a relati...
A parameterized threshold nonlinearity, which separates a mixture of signals with any distribution (...