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OALib Journal期刊
ISSN: 2333-9721
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Combination of Acoustic Models Trained from Different Unit Sets for Chinese Continuous Speech Recognition
汉语连续语音识别中不同基元声学模型的复合

Keywords: Speech recognition,Acoustic model combination,Acoustic model selection,Error rate
语音识别
,声学模型复合,声学模型选择,错误率

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Abstract:

Combination of acoustic models trained from different unit sets is studied in this paper. For Chinese continuous speech recognition, Prevailing unit sets include context-dependent initial-final unit set and context-dependent phone unit set. Through experiments it is discovered that some Chinese syllables have higher recognition rates under initial-final model while some have higher recognition rates under phone model. In this paper, a method is proposed to combine these two acoustic models, On one hand the two acoustic models can be fully utilized during the recognition process; on the other hand, some models that lead to low recognition rate will not be used. Experiments show that in comparison with initial-final model and phone model, syllable error rate is reduced by 9.60% and 6.10% respectively after using the provided method.

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