Improving Acoustic Model Precision by Incorporating a Wide Phonetic Context Based on a Bayesian Framework(Speech Recognition, <Special Section> Statistical Modeling for Speech Processing)
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概要
- 論文の詳細を見る
Over the last decade, the Bayesian approach has increased in popularity in many application areas. It uses a probabilistic framework which encodes our beliefs or actions in situations of uncertainty. Information from several models can also be combined based on the Bayesian framework to achieve better inference and to better account for modeling uncertainty. The approach we adopted here is to utilize the benefits of the Bayesian framework to improve acoustic model precision in speech recognition systems, which modeling a wider-than-triphone context by approximating it using several less context-dependent models. Such a composition was developed in order to avoid the crucial problem of limited training data and to reduce the model complexity. To enhance the model reliability due to unseen contexts and limited training data, flooring and smoothing techniques are applied. Experimental results show that the proposed Bayesian pentaphone model improves word accuracy in comparison with the standard triphone model.
- 社団法人電子情報通信学会の論文
- 2006-03-01
著者
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NAKAMURA Satoshi
ATR Spoken Language Translation Research Labs.
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Markov Konstantin
Atr Spoken Language Communication Research Laboratories
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Sakti Sakriani
Atr Spoken Language Communication Research Laboratories
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Nakamura Satoshi
Atr Spoken Language Translation Res. Lab. Kyoto Jpn
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Nakamura Satoshi
Atr Spoken Language Communication Res. Lab. Kyoto‐fu Jpn
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