We propose a nonlinear self-organising network which solely employs computationally simple hebbian and anti-hebbian learning in approximating a linear independent component analysis (ICA). Current neural architectures and algorithms which perform parallel ICA are either restricted to positively kurtotic data distributions [1] or data which exhibits one sign of kurtosis [2, 3, 12]. We show that the proposed network is capable of separating mixtures of speech, noise and signals with both platykurtic (positive kurtosis) and leptokurtic (negative kurtosis) distributions in a blind manner. A simulation is reported which successfully separates a mixture of twenty sources of music, speech, noise and fundamental frequencies. 1
Independent component analysis (ICA) is a computational mehtod to solve blind source separation (BSS...
International audienceThis paper presents a new adaptive blind separation of sources (BSS) method fo...
Linear Independent Component Analysis (ICA) has become an important technique in unsupervised neural...
We propose a nonlinear self-organizing network which solely employs computationally simple hebbian a...
We propose a novel nonlinear self-organising network, which employs hebbian and anti-hebbian learnin...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
In this paper, a two--layer neural network is presented that organizes itself to perform blind sourc...
In this paper, we propose an evolutionary neural network for blind source separation (BSS). The BSS ...
Abstract: The existing independent component neural netw orks (ICNNs) in the literature need same nu...
Based on the one-bit-matching principle and by turning the de-mixing matrix into an orthogonal matri...
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
A hybrid mixture is a mixture of supergaussian, gaussian, and subgaussian independent components(ICs...
A fundamental problem in neural network research, as well as in many other disciplines, is finding a...
Unsupervised learning algorithms paying attention only to second-order statistics ignore the phase s...
Independent component analysis (ICA) is a computational mehtod to solve blind source separation (BSS...
International audienceThis paper presents a new adaptive blind separation of sources (BSS) method fo...
Linear Independent Component Analysis (ICA) has become an important technique in unsupervised neural...
We propose a nonlinear self-organizing network which solely employs computationally simple hebbian a...
We propose a novel nonlinear self-organising network, which employs hebbian and anti-hebbian learnin...
A nonlinear self-organising neural network is proposed, which employs hierarchic linear negative fee...
In this paper, a two--layer neural network is presented that organizes itself to perform blind sourc...
In this paper, we propose an evolutionary neural network for blind source separation (BSS). The BSS ...
Abstract: The existing independent component neural netw orks (ICNNs) in the literature need same nu...
Based on the one-bit-matching principle and by turning the de-mixing matrix into an orthogonal matri...
This paper presents the derivation of an unsupervised learning algorithm, which enables the identifi...
This paper introduces an Independent Component Analysis (ICA) approach to the separation of nonlinea...
A hybrid mixture is a mixture of supergaussian, gaussian, and subgaussian independent components(ICs...
A fundamental problem in neural network research, as well as in many other disciplines, is finding a...
Unsupervised learning algorithms paying attention only to second-order statistics ignore the phase s...
Independent component analysis (ICA) is a computational mehtod to solve blind source separation (BSS...
International audienceThis paper presents a new adaptive blind separation of sources (BSS) method fo...
Linear Independent Component Analysis (ICA) has become an important technique in unsupervised neural...