Using multiple vector quantization and semicontinuous hidden Markov models for speech recognition

A. Peinado, J. C. Segura, A. Rubio, M. C. Benítez
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引用次数: 10

Abstract

Although the continuous HMM (CHMM) technique seems to be the most flexible and complete tool for speech modeling, it is not always used for the implementation of speech recognition systems due to several problems related to training and computational complexity. Besides, it is not clear the superiority of continuous models over other well-known types of HMMs, such as discrete (DHMM) or semicontinuous (SCHMM) models, or multiple vector quantization (MVQ) models, a new type of HMM modeling. The authors propose a new variant of HMM models, the SCMVQ, HMM models (semicontinuous multiple vector quantization HMM), that uses one VQ codebook per recognition unit and several quantization candidates, Formally, SCMVQ modeling is the closest one to CHMM, although requiring less computation than SCHMMs. Besides, the authors show that SCMVQs can obtain better recognition results than DHMMs, SCHMMs or MVQs.<>
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利用多矢量量化和半连续隐马尔可夫模型进行语音识别
尽管连续HMM (CHMM)技术似乎是最灵活和完整的语音建模工具,但由于与训练和计算复杂性相关的几个问题,它并不总是用于语音识别系统的实现。此外,连续模型比其他已知的HMM类型,如离散(DHMM)或半连续(SCHMM)模型,或多向量量化(MVQ)模型(一种新型HMM建模)的优势尚不清楚。作者提出了HMM模型的一种新变体SCMVQ, HMM模型(半连续多矢量量化HMM),每个识别单元使用一个VQ码本和几个量化候选,从形式上讲,SCMVQ模型是最接近CHMM的模型,尽管比schmm模型需要更少的计算量。此外,SCMVQs比dhmm、schmm和MVQs具有更好的识别效果。
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