Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces

Speaker independent feature extraction is a critical problem in speech recognition. Oriented principal component analysis (OPCA) is a potential solution that can find a subspace robust against noise of the data set. The objective of this paper is to find a speaker-independent subspace by generalizin...

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Main Authors: Heeyoul Choi, Ricardo Gutierrez-osuna, Seungjin Choi, Yoonsuck Choe
Other Authors: The Pennsylvania State University CiteSeerX Archives
Format: Text
Language:English
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Online Access:http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.159.2245
http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf
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spelling ftciteseerx:oai:CiteSeerX.psu:10.1.1.159.2245 2023-05-15T15:02:43+02:00 Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces Heeyoul Choi Ricardo Gutierrez-osuna Seungjin Choi Yoonsuck Choe The Pennsylvania State University CiteSeerX Archives application/pdf http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.159.2245 http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf en eng http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.159.2245 http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf Metadata may be used without restrictions as long as the oai identifier remains attached to it. http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf text ftciteseerx 2016-01-07T15:37:16Z Speaker independent feature extraction is a critical problem in speech recognition. Oriented principal component analysis (OPCA) is a potential solution that can find a subspace robust against noise of the data set. The objective of this paper is to find a speaker-independent subspace by generalizing OPCA in two steps: First, we find a nonlinear subspace with the help of a kernel trick, which we refer to as kernel OPCA. Second, we generalize OPCA to problems with more than two phonemes, which leads to oriented discriminant analysis (ODA). In addition, we equip ODA with the kernel trick again, which we refer to as kernel ODA. The models are tested on the CMU ARCTIC speech database. Our results indicate that our proposed kernel methods can outperform linear OPCA and linear ODA at finding a speaker-independent phoneme space. 1 Text Arctic Unknown Arctic
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description Speaker independent feature extraction is a critical problem in speech recognition. Oriented principal component analysis (OPCA) is a potential solution that can find a subspace robust against noise of the data set. The objective of this paper is to find a speaker-independent subspace by generalizing OPCA in two steps: First, we find a nonlinear subspace with the help of a kernel trick, which we refer to as kernel OPCA. Second, we generalize OPCA to problems with more than two phonemes, which leads to oriented discriminant analysis (ODA). In addition, we equip ODA with the kernel trick again, which we refer to as kernel ODA. The models are tested on the CMU ARCTIC speech database. Our results indicate that our proposed kernel methods can outperform linear OPCA and linear ODA at finding a speaker-independent phoneme space. 1
author2 The Pennsylvania State University CiteSeerX Archives
format Text
author Heeyoul Choi
Ricardo Gutierrez-osuna
Seungjin Choi
Yoonsuck Choe
spellingShingle Heeyoul Choi
Ricardo Gutierrez-osuna
Seungjin Choi
Yoonsuck Choe
Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
author_facet Heeyoul Choi
Ricardo Gutierrez-osuna
Seungjin Choi
Yoonsuck Choe
author_sort Heeyoul Choi
title Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
title_short Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
title_full Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
title_fullStr Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
title_full_unstemmed Kernel Oriented Discriminant Analysis for Speaker-Independent Phoneme Spaces
title_sort kernel oriented discriminant analysis for speaker-independent phoneme spaces
url http://citeseerx.ist.psu.edu/viewdoc/summary?doi=10.1.1.159.2245
http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf
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op_source http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf
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http://faculty.cs.tamu.edu/choe/ftp/publications/choi.icpr08.pdf
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