Publication detail
Frame based phoneme classification using large margin and kernel methods
PFEIFER, V. BALÍK, M.
Original Title
Frame based phoneme classification using large margin and kernel methods
English Title
Frame based phoneme classification using large margin and kernel methods
Type
conference paper
Language
en
Original Abstract
This Article deals with the frame-based phoneme classifiers. A new efficient sequence-based training algorithm is proposed along with the sequence-based classification function. This method had shown to be an effective trainign tool compared with the standard frame-based training algorithm. The proposed algorithm had been further completed with the non-linear transform (kernel methods). The proposed algorithm was evaluated over the TIMIT speech corpus.
English abstract
This Article deals with the frame-based phoneme classifiers. A new efficient sequence-based training algorithm is proposed along with the sequence-based classification function. This method had shown to be an effective trainign tool compared with the standard frame-based training algorithm. The proposed algorithm had been further completed with the non-linear transform (kernel methods). The proposed algorithm was evaluated over the TIMIT speech corpus.
Keywords
classifier, features, kernel, optimalization, phoneme, prototypes, speech, tree
RIV year
2010
Released
20.08.2010
ISBN
978-963-88981-0-4
Book
Telecomunications and Signal Processing - TSP 2010
Pages from
1
Pages to
4
Pages count
4
Documents
BibTex
@inproceedings{BUT25510,
author="Václav {Pfeifer} and Miroslav {Balík}",
title="Frame based phoneme classification using large margin and kernel methods",
annote="This Article deals with the frame-based phoneme classifiers. A new efficient sequence-based training algorithm is proposed along with the sequence-based classification function. This method had shown to be an effective trainign tool compared with the standard frame-based training algorithm. The proposed algorithm had been further completed with the non-linear transform (kernel methods). The proposed algorithm was evaluated over the TIMIT speech corpus.",
booktitle="Telecomunications and Signal Processing - TSP 2010",
chapter="25510",
howpublished="electronic, physical medium",
year="2010",
month="august",
pages="1--4",
type="conference paper"
}