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화자식별을 위한 전역 공분산에 기반한 주성분분석

Authors
서창우임영환
Issue Date
2009
Publisher
한국음성학회
Keywords
speaker identification; principal component analysis; global covariance; Gaussian mixture model; eigenvalue; eigenvactor; speaker identification; principal component analysis; global covariance; Gaussian mixture model; eigenvalue; eigenvactor
Citation
말소리와 음성과학, v.1, no.1, pp.69 - 73
Journal Title
말소리와 음성과학
Volume
1
Number
1
Start Page
69
End Page
73
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/16424
ISSN
2005-8063
Abstract
This paper proposes an efficient global covariance-based principal component analysis (GCPCA) for speaker identification. Principal component analysis (PCA) is a feature extraction method which reduces the dimension of the feature vectors and the correlation among the feature vectors by projecting the original feature space into a small subspace through a transformation. However, it requires a larger amount of training data when performing PCA to find the eigenvalue and eigenvector matrix using the full covariance matrix by each speaker. The proposed method first calculates the global covariance matrix using training data of all speakers. It then finds the eigenvalue matrix and the corresponding eigenvector matrix from the global covariance matrix. Compared to conventional PCA and Gaussian mixture model (GMM) methods, the proposed method shows better performance while requiring less storage space and complexity in speaker identification.
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