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Enhanced voice activity detection in kernel subspace domain

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Author(s)
Kim, Dong KookShin, Jong WonChang, Joon-Hyuk
Type
Article
Citation
Journal of the Acoustical Society of America, v.134, no.1, pp.EL70 - EL76
Issued Date
2013-07
Abstract
This paper proposes a voice activity detection (VAD) method in a kernel subspace domain to improve the performance of the kernel-based VAD. A linear transform matrix that can simultaneously diagonalize the two covariance matrices using kernel principal component analysis is presented to generate the kernel subspace. The likelihood ratio test based on Gaussian distributions is applied for the VAD in the kernel subspace. Experimental results show that the proposed VAD algorithm outperforms the conventional approaches under various noise conditions. (C) 2013 Acoustical Society of America
Publisher
ACOUSTICAL SOC AMER AMER INST PHYSICS
ISSN
0001-4966
DOI
10.1121/1.4809770
URI
https://scholar.gist.ac.kr/handle/local/15515
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