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Journal ArticleDOI

Blind Source Separation Exploiting Higher-Order Frequency Dependencies

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TLDR
A new algorithm is proposed that exploits higher order frequency dependencies of source signals in order to separate them when they are mixed and outperforms the others in most cases.
Abstract
Blind source separation (BSS) is a challenging problem in real-world environments where sources are time delayed and convolved. The problem becomes more difficult in very reverberant conditions, with an increasing number of sources, and geometric configurations of the sources such that finding directionality is not sufficient for source separation. In this paper, we propose a new algorithm that exploits higher order frequency dependencies of source signals in order to separate them when they are mixed. In the frequency domain, this formulation assumes that dependencies exist between frequency bins instead of defining independence for each frequency bin. In this manner, we can avoid the well-known frequency permutation problem. To derive the learning algorithm, we define a cost function, which is an extension of mutual information between multivariate random variables. By introducing a source prior that models the inherent frequency dependencies, we obtain a simple form of a multivariate score function. In experiments, we generate simulated data with various kinds of sources in various environments. We evaluate the performances and compare it with other well-known algorithms. The results show the proposed algorithm outperforms the others in most cases. The algorithm is also able to accurately recover six sources with six microphones. In this case, we can obtain about 16-dB signal-to-interference ratio (SIR) improvement. Similar performance is observed in real conference room recordings with three human speakers reading sentences and one loudspeaker playing music

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Citations
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A Consolidated Perspective on Multimicrophone Speech Enhancement and Source Separation

TL;DR: This paper proposes to analyze a large number of established and recent techniques according to four transverse axes: 1) the acoustic impulse response model, 2) the spatial filter design criterion, 3) the parameter estimation algorithm, and 4) optional postfiltering.
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Underdetermined Convolutive Blind Source Separation via Frequency Bin-Wise Clustering and Permutation Alignment

TL;DR: A blind source separation method for convolutive mixtures of speech/audio sources that can be applied to an underdetermined case where there are fewer microphones than sources is presented.
Journal ArticleDOI

Joint Blind Source Separation by Multiset Canonical Correlation Analysis

TL;DR: A generative model of joint BSS based on the correlation of latent sources within and between datasets using multiset canonical correlation analysis (M-CCA) and its utility in estimating meaningful brain activations from a visuomotor task is proposed.
Proceedings ArticleDOI

Stable and fast update rules for independent vector analysis based on auxiliary function technique

TL;DR: Stable and fast update rules for independent vector analysis (IVA) based on auxiliary function technique that yield faster convergence and better results than natural gradient updates is presented.
References
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Book

Independent Component Analysis

TL;DR: Independent component analysis as mentioned in this paper is a statistical generative model based on sparse coding, which is basically a proper probabilistic formulation of the ideas underpinning sparse coding and can be interpreted as providing a Bayesian prior.
Journal ArticleDOI

Image method for efficiently simulating small‐room acoustics

TL;DR: The theoretical and practical use of image techniques for simulating the impulse response between two points in a small rectangular room, when convolved with any desired input signal, simulates room reverberation of the input signal.
Proceedings Article

A New Learning Algorithm for Blind Signal Separation

TL;DR: A new on-line learning algorithm which minimizes a statistical dependency among outputs is derived for blind separation of mixed signals and has an equivariant property and is easily implemented on a neural network like model.
Journal ArticleDOI

Convolutive blind separation of non-stationary sources

TL;DR: This work tackles the problem of source separation by explicitly exploiting the nonstationarity of the acoustic sources, and finds an FIR backward model, which generates well separated model sources.
Journal ArticleDOI

Blind separation of convolved mixtures in the frequency domain

TL;DR: It is observed that convolved Mixing in the time domain corresponds to instantaneous mixing in the frequency domain, and convolved mixing can be inverted using simpler and more robust algorithms than the ones recently developed.