73 research outputs found

    MLP-BASED SOURCE SEPARATION FOR MLP-LIKE NONLINEAR MIXTURES

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    In this paper, the nonlinear blind source separation problem is addressed by using a multilayer perceptron (MLP) as separating system, which is justified in the universal approximation property of MLP networks. An adaptive learning algorithm for a perceptron with two hidden-layers is presented. The algorithm minimizes the mutual information between the outputs of the MLP. The performance of the proposed method is illustrated by some experiments. 1. INTRODUCTION. Blind Source Separation (BSS) is a fundamental problem in signal processing. It consists of retrieving unobserved sources s1(t),..., sN (t), assumed to be statistically independent (which is phisically plausible when the source

    Brain connectivity analysis: a short survey

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    This short survey the reviews recent literature on brain connectivity studies. It encompasses all forms of static and dynamic connectivity whether anatomical, functional, or effective. The last decade has seen an ever increasing number of studies devoted to deduce functional or effective connectivity, mostly from functional neuroimaging experiments. Resting state conditions have become a dominant experimental paradigm, and a number of resting state networks, among them the prominent default mode network, have been identified. Graphical models represent a convenient vehicle to formalize experimental findings and to closely and quantitatively characterize the various networks identified. Underlying these abstract concepts are anatomical networks, the so-called connectome, which can be investigated by functional imaging techniques as well. Future studies have to bridge the gap between anatomical neuronal connections and related functional or effective connectivities

    Real Time QRS Detection Based on M-ary Likelihood Ratio Test on the DFT Coefficients

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    This paper shows an adaptive statistical test for QRS detection of electrocardiography (ECG) signals. The method is based on a M-ary generalized likelihood ratio test (LRT) defined over a multiple observation window in the Fourier domain. The motivations for proposing another detection algorithm based on maximum a posteriori (MAP) estimation are found in the high complexity of the signal model proposed in previous approaches which i) makes them computationally unfeasible or not intended for real time applications such as intensive care monitoring and (ii) in which the parameter selection conditions the overall performance. In this sense, we propose an alternative model based on the independent Gaussian properties of the Discrete Fourier Transform (DFT) coefficients, which allows to define a simplified MAP probability function. In addition, the proposed approach defines an adaptive MAP statistical test in which a global hypothesis is defined on particular hypotheses of the multiple observation window. In this sense, the observation interval is modeled as a discontinuous transmission discrete-time stochastic process avoiding the inclusion of parameters that constraint the morphology of the QRS complexes.This work has received research funding from the Spanish government (www.micinn.es) under project TEC2012 34306 (DiagnoSIS, Diagnosis by means of Statistical Intelligent Systems, 70K€) and projects P09-TIC-4530 (300K€) and P11-TIC-7103 (156K€) from the Andalusian government (http://www.juntadeandalucia.es/organismo​s/economiainnovacioncienciayempleo.html)

    A geometrical algorithm for blind separation of sources

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    Dans cet article, nous proposons une méthode géométrique simple pour la séparation aveugle de sources. Cette méthode s'applique pour des sources de densité de probabilité bornée. Elle est fondée sur l'identification des pentes des arètes d'un parallélépipède. Nous proposons un algorithme dans le cas de deux mélanges de deux sources, dont nous discutons les performances. Actuellement, nous abordons l'extension de l'algorithme au cas de plus de deux mélanges et deux sources

    Competitive Learning, Simulated Annealing and Genetic Algorithms for the Separation of Sources

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    This paper presents a new adaptive procedure for the linear and non-linear separation of signals with nonuniform, symmetrical probability distributions, based on both simulated annealing (SA) and competitive learning (CL) methods by means of a neural network, considering the properties of the vectorial spaces of sources and mixtures, and using a multiple linearization in the mixture space. Also, the paper proposes the fusion of two important paradigms, Genetic Algorithms and the Blind Separation of Sources in Nonlinear Mixtures (GABSS). Although the topic of BSS, by means of various techniques, including ICA, PCA, and neural networks, has been amply discussed in the literature, to date the possibility of using genetic algorithms has not been seriously explored. However, in Nonlinear Mixtures, optimization of the system parameters and, especially, the search for invertible functions is very difficult due to the existence of many local minima. From experimental results, this paper demonstrates the possible benefits offered by GAs in combination with BSS, such as robustness against local minima, the parallel search for various solutions, and a high degree of flexibility in the evaluation function.The main characteristics of the method are its simplicity and the rapid convergence experimentally validated by the separation of many kinds of signals, such as speech or biomedical data

    QUINZIEME COLLOQUE GRETSI - JUAN-LES-PINS FRANCE - DU 18 AU 21 SEPTEMBRE 1995 273 A Geometrical Algorithm for Blind Separation of Sources

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    In this paper, we present a geometrical method for solving the problem of blind separation of sources. The method assumes that sources have bounded probability density functions pdf. It is based on estimation of edges of a parallelepiped. We propose an algorithm for two mixtures of two sources, performance of which are discussed. Currently,we address the generalization of the method for more than two mixtures and two sources
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