Mixing matrix estimation using discriminative clustering for blind source separation

Volume: 23, Issue: 1, Pages: 9 - 18
Published: Jan 1, 2013
Abstract
Mixing matrix estimation in instantaneous blind source separation (BSS) can be performed by exploiting the sparsity and disjoint orthogonality of source signals. As a result, approaches for estimating the unknown mixing process typically employ clustering algorithms on the mixtures in a parametric domain, where the signals can be sparsely represented. In this paper, we propose two algorithms to perform discriminative clustering of the mixture...
Paper Details
Title
Mixing matrix estimation using discriminative clustering for blind source separation
Published Date
Jan 1, 2013
Volume
23
Issue
1
Pages
9 - 18
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