PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG

Independent component analysis (ICA) is a class of algorithms widely applied to separate sources in EEG data. Most ICA approaches use optimization criteria derived from temporal statistical independence and are invariant with respect to the actual ordering of individual observations. We propose a me...

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Main Authors: Kenneth Ball, Nima Bigdely-Shamlo, Tim Mullen, Kay Robbins
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2016/9754813
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spelling doaj-7527e06b7c744262960eef1fa7bdcfd82020-11-25T02:17:26ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732016-01-01201610.1155/2016/97548139754813PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEGKenneth Ball0Nima Bigdely-Shamlo1Tim Mullen2Kay Robbins3Department of Computer Science, University of Texas at San Antonio, San Antonio, TX 78249, USAQusp Labs, 6020 Cornerstone Court West, Suite 220, San Diego, CA 92121, USAQusp Labs, 6020 Cornerstone Court West, Suite 220, San Diego, CA 92121, USADepartment of Computer Science, University of Texas at San Antonio, San Antonio, TX 78249, USAIndependent component analysis (ICA) is a class of algorithms widely applied to separate sources in EEG data. Most ICA approaches use optimization criteria derived from temporal statistical independence and are invariant with respect to the actual ordering of individual observations. We propose a method of mapping real signals into a complex vector space that takes into account the temporal order of signals and enforces certain mixing stationarity constraints. The resulting procedure, which we call Pairwise Complex Independent Component Analysis (PWC-ICA), performs the ICA in a complex setting and then reinterprets the results in the original observation space. We examine the performance of our candidate approach relative to several existing ICA algorithms for the blind source separation (BSS) problem on both real and simulated EEG data. On simulated data, PWC-ICA is often capable of achieving a better solution to the BSS problem than AMICA, Extended Infomax, or FastICA. On real data, the dipole interpretations of the BSS solutions discovered by PWC-ICA are physically plausible, are competitive with existing ICA approaches, and may represent sources undiscovered by other ICA methods. In conjunction with this paper, the authors have released a MATLAB toolbox that performs PWC-ICA on real, vector-valued signals.http://dx.doi.org/10.1155/2016/9754813
collection DOAJ
language English
format Article
sources DOAJ
author Kenneth Ball
Nima Bigdely-Shamlo
Tim Mullen
Kay Robbins
spellingShingle Kenneth Ball
Nima Bigdely-Shamlo
Tim Mullen
Kay Robbins
PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
Computational Intelligence and Neuroscience
author_facet Kenneth Ball
Nima Bigdely-Shamlo
Tim Mullen
Kay Robbins
author_sort Kenneth Ball
title PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
title_short PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
title_full PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
title_fullStr PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
title_full_unstemmed PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG
title_sort pwc-ica: a method for stationary ordered blind source separation with application to eeg
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2016-01-01
description Independent component analysis (ICA) is a class of algorithms widely applied to separate sources in EEG data. Most ICA approaches use optimization criteria derived from temporal statistical independence and are invariant with respect to the actual ordering of individual observations. We propose a method of mapping real signals into a complex vector space that takes into account the temporal order of signals and enforces certain mixing stationarity constraints. The resulting procedure, which we call Pairwise Complex Independent Component Analysis (PWC-ICA), performs the ICA in a complex setting and then reinterprets the results in the original observation space. We examine the performance of our candidate approach relative to several existing ICA algorithms for the blind source separation (BSS) problem on both real and simulated EEG data. On simulated data, PWC-ICA is often capable of achieving a better solution to the BSS problem than AMICA, Extended Infomax, or FastICA. On real data, the dipole interpretations of the BSS solutions discovered by PWC-ICA are physically plausible, are competitive with existing ICA approaches, and may represent sources undiscovered by other ICA methods. In conjunction with this paper, the authors have released a MATLAB toolbox that performs PWC-ICA on real, vector-valued signals.
url http://dx.doi.org/10.1155/2016/9754813
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