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Speaker adaptation based on Markov modeling of speakers in speaker-independent speech recognition

机译:基于说话人马尔可夫模型的说话人自适应在说话人独立语音识别中的应用

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A speaker adaptation method for HMM (hidden Markov model) based speaker-independent speech recognition without supervising is presented. This method reduces the confusion between models, which is caused by training using large-size training data, by controlling the influences of the training samples used in HMM training by considering the similarity of speaker individuality. A Markov model and a hidden Markov model are used to represent an input speaker's individuality. These models are compared through their entropy and /b, d, g, m, n, N/ recognition task. The results show that a hidden Markov model is more suitable than a Markov model.
机译:提出了一种基于HMM(隐马尔可夫模型)的无监督说话人自适应语音识别的说话人自适应方法。该方法通过考虑说话者个性的相似性来控制HMM训练中使用的训练样本的影响,从而减少了因使用大型训练数据进行训练而引起的模型之间的混淆。马尔可夫模型和隐马尔可夫模型用于表示输入说话者的个性。这些模型通过其熵和/ b,d,g,m,n,N /识别任务进行比较。结果表明,隐马尔可夫模型比马尔可夫模型更合适。

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