DocumentCode :
661315
Title :
Deep neural networks for syllable based acoustic modeling in Chinese speech recognition
Author :
Xiangang Li ; Caifu Hong ; Yuning Yang ; Xihong Wu
Author_Institution :
Key Lab. of Machine Perception (Minist. of Educ.), Peking Univ., Beijing, China
fYear :
2013
fDate :
Oct. 29 2013-Nov. 1 2013
Firstpage :
1
Lastpage :
4
Abstract :
Recently, the deep neural networks (DNNs) based acoustic modeling methods have been successfully applied to many speech recognition tasks. This paper reports the work about applying DNNs for syllable based acoustic modeling in Chinese automatic speech recognition (ASR). Compared with initial/finals (IFs), syllable can implicitly model the intra-syllable variations in better accuracy. However, the context dependent syllable based modeling set holds too many units, bringing about heavy problems on modeling and decoding implementation. In this paper, a WFST decoding framework is applied. Moreover, the decision tree based state tying and DNNs based models are discussed for the acoustic model training. The experimental results show that compared with the traditional IFs based modeling method, the proposed syllable modeling method using DNNs is more robust for data sparsity problem, which indicates that it has the potential to obtain better performance for Chinese ASR.
Keywords :
natural language processing; neural nets; speech recognition; ASR; Chinese automatic speech recognition; DNN; IF based modeling method; WFST decoding framework; acoustic model training; acoustic modeling methods; data sparsity problem; decoding implementation; deep neural networks; intrasyllable variations; syllable based acoustic modeling; Acoustics; Context; Decoding; Hidden Markov models; Speech; Speech recognition; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signal and Information Processing Association Annual Summit and Conference (APSIPA), 2013 Asia-Pacific
Conference_Location :
Kaohsiung
Type :
conf
DOI :
10.1109/APSIPA.2013.6694176
Filename :
6694176
Link To Document :
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