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Method and apparatus for modeling words with composite Markov models

机译:用复合马尔可夫模型对单词建模的方法和装置

摘要

A method and apparatus of modeling a word by concatenating a series of elemental models to form a word model. At least one elemental model in the series is a composite elemental model formed by combining the starting states of at least first and second primitive elemental models. Each primitive elemental model represents a speech component. The primitive elemental models are combined by a weighted combination of their parameters in proportion to the values of the weighting factors.;In order to tailor the word model to closely represent variations in the pronunciation of the word, the word is uttered a plurality of times by a plurality of different speakers. From the prior values of the weighting factors, and from the values of the parameters of the first and second primitive elemental models, the conditional probability of occurrence of the first primitive elemental model given the occurrence of the composite elemental model and given the occurrence of the observed sequence of component sounds is estimated. A posterior value for the first weighting factor is estimated from the conditional probability.;By constructing word models from composite elemental models, and by constructing composite elemental models from primitive elemental models, it is possible for the resulting word model to closely represent many variations in the pronunciation of a word. By providing a relatively small set of primitive elemental models in comparison to a relatively large vocabulary of words, the models can be trained to the voice of a new speaker by having the new speaker utter only a small subset of the words in the vocabulary.
机译:通过串联一系列基本模型以形成单词模型来建模单词的方法和装置。系列中的至少一个基本模型是通过组合至少第一和第二基本基本模型的起始状态而形成的复合基本模型。每个原始元素模型代表一个语音成分。原始元素模型通过参数的加权组合与加权因子的值成比例的方式进行组合。;为了使单词模型适合于严密表示单词发音的变化,会多次发出该单词由多个不同的扬声器。根据加权因子的先验值,以及第一和第二原始元素模型的参数值,考虑到复合元素模型的出现和给定原始元素模型的出现,第一原始元素模型出现的条件概率估计观察到的组件声音顺序。通过条件概率估计出第一个加权因子的后验值。通过从复合元素模型构建单词模型,并通过从原始元素模型构建复合元素模型,最终的词模型有可能紧密地表示许多变体。一个单词的发音。与相对较大的单词词汇相比,通过提供相对较小的原始元素模型集,可以通过使新说话者仅说出词汇中单词的一小部分来将模型训练为新说话者的语音。

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