Independent Component Analysis and Blind Signal Separation: 6th International Conference, ICA 2006, Charleston, SC, USA, March 5-8, 2006, Proceedings

Overview

This book constitutes the refereed proceedings of the 6th International Conference on Independent Component Analysis and Blind Source Separation, ICA 2006, held in Charleston, SC, USA, in March 2006. The 120 revised papers presented were carefully reviewed and selected from 183 submissions. The papers are organized in topical sections on algorithms and architectures, applications, medical applications, speech and signal processing, theory, and visual and sensory processing.

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Overview

This book constitutes the refereed proceedings of the 6th International Conference on Independent Component Analysis and Blind Source Separation, ICA 2006, held in Charleston, SC, USA, in March 2006. The 120 revised papers presented were carefully reviewed and selected from 183 submissions. The papers are organized in topical sections on algorithms and architectures, applications, medical applications, speech and signal processing, theory, and visual and sensory processing.

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Table of Contents

Simple LU and QR based non-orthogonal matrix joint diagonalization 1
Separation of nonlinear image mixtures by denoising source separation 8
Second-order separation of multidimensional sources with constrained mixing system 16
Fast kernel density independent component analysis 24
Csiszar's divergences for non-negative matrix factorization : family of new algorithms 32
Second-order blind identification of underdetermined mixtures 40
Differential fast fixed-point BSS for underdetermined linear instantaneous mixtures 48
Equivariant algorithms for estimating the strong-uncorrelating transform in complex independent component analysis 57
Blind source separation of post-nonlinear mixtures using evolutionary computation and order statistics 66
Model structure selection in convolutive mixtures 74
Estimating the information potential with the fast Gauss transform 82
K-EVD clustering and its applications to sparse component analysis 90
An EM method for spatio-temporal blind source separation using an AR-MOG source model 98
Markovian blind image separation 106
New permutation algorithms for causal discovery using ICA 115
Eigenvector algorithms with reference signals for frequency domain BSS 123
Sparse coding for convolutive blind audio source separation 132
ICA-based binary feature construction 140
A novel dimension reduction procedure for searching non-Gaussian subspaces 149
Estimating non-Gaussian subspaces by characteristic functions 157
Independent vector analysis : an extension of ICA to multivariate components 165
A one-bit-matching learning algorithm for independent component analysis 173
Blind separation of underwater acoustic signals 181
Partitioned factor analysis for interference suppression and source extraction 189
Recursive generalized eigendecomposition for independent component analysis 198
Recovery of sparse representations by polytope faces pursuit 206
ICA based semi-supervised learning algorithm for BCI systems 214
State inference in variational Bayesian nonlinear state-space models 222
Quadratic MIMO contrast functions for blind source separation in a convolutive context 230
A canonical genetic algorithm for blind inversion of linear channels 238
Efficient separation of convolutive image mixtures 246
Sparse nonnegative matrix factorization applied to microarray data sets 254
Minimum support ICA using order statistics : part I : quasi-range based support estimation 262
Minimum support ICA using order statistics : part II : performance analysis 270
Separation of periodically time-varying mixtures using second-order statistics 278
An independent component ordering and selection procedure based on the MSE criterion 286
Riemannian optimization method on the flag manifold for independent subspace analysis 295
A two-stage based approach for extracting periodic signals 303
ICA by PCA approach : relating higher-order statistics to second-order moments 311
Separability of convolutive mixtures : application to the separation of combustion noise and piston-slap in diesel engine 319
Blind signal separation on real data : tracking and implementation 327
Compression of multicomponent satellite images using independent components analysis 335
Fixed-point complex ICA algorithms for the blind separation of sources using their real or imaginary components 343
Blind estimation of row relative degree via constrained mutual information minimization 352
Undoing the affine transformation using blind source separation 360
Source separation of astrophysical ice mixtures 368
Improvement on multivariate statistical process monitoring using multi-scale ICA 376
Global noise elimination from ELF band electromagnetic signals by independent component analysis 384
BLUES from music : BLind underdetermined extraction of sources from music 392
On the performance of a HOS-based ICA algorithm in BSS of acoustic emission signals 400
Two applications of independent component analysis for non-destructive evaluation by ultrasounds 406
Blind spatial multiplexing using order statistics for time-varying channels 414
Semi-blind equalization of wireless MIMO frequency selective communication channels 422
Comparison of BSS methods for the detection of [alpha]-activity components in EEG 430
Analysis on EEG signals in visually and auditorily guided Saccade task by FICAR 438
Cogito componentiter ergo sum 446
Kernel independent component analysis for gene expression data clustering 454
Topographic independent component analysis of gene expression time series data 462
Blind source separation of cardiac murmurs from heart recordings 470
Derivation of atrial surface reentries applying ICA to the standard electrocardiogram of patients in postoperative atrial fibrillation 478
Wavelet denoising as preprocessing stage to improve ICA performance in atrial fibrillation analysis 486
Performance study of convolutive BSS algorithms applied to the electrocardiogram of atrial fibrillation 495
Brains and phantoms : an ICA study of fMRI 503
Comparison of ICA algorithms for the isolation of biological artifacts in magnetoencephalography 511
Automatic de-noising of Doppler ultrasound signals using matching pursuit method 519
A novel normalization and regularization scheme for broadband convolutive blind source separation 527
A robust method to count and locate audio sources in a stereophonic linear instantaneous mixture 536
Convolutive demixing with sparse discrete prior models for Markov sources 544
Independent component analysis for speech enhancement with missing TF content 552
Harmonic source separation using prestored spectra 561
Underdetermined convoluted source reconstruction using LP and SOCP, and a neural approximator of the optimizer 569
Utilization of blind source separation algorithms for MIMO linear precoding 577
Speech enhancement based on the response features of facilitated EI neurons 585
Blind separation of sparse sources using Jeffrey's inverse prior and the EM algorithm 593
Solution of permutation problem in frequency domain ICA, using multivariate probability density functions 601
ICA-based speech features in the frequency domain 609
Monaural music source separation : nonnegativity, sparseness, and shift-invariance 617
Complex FastIVA : a robust maximum likelihood approach of MICA for convolutive BSS 625
Under-determined source separation : comparison of two approaches based on sparse decompositions 633
Separation of mixed audio signals by source localization and binary masking with Hilbert spectrum 641
ICA and binary-mask-based blind source separation with small directional microphones 649
Blind deconvolution with sparse priors on the deconvolution filters 658
Estimating the spatial position of spectral components in audio 666
Separating underdetermined convolutive speech mixtures 674
Two time-frequency ratio-based blind source separation methods for time-delayed mixtures 682
On calculating the inverse of separation matrix in frequency-domain blind source separation 691
Nonnegative matrix factor 2-D deconvolution for blind single channel source separation 700
Speech enhancement in short-wave channel based on ICA in empirical mode decomposition domain 708
Robust preprocessing of gene expression microarrays for independent component analysis 714
Single-channel mixture decomposition using Bayesian harmonic models 722
Enhancement of source independence for blind source separation 731
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