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Information theoretic factorization of speaker and language in hidden Markov models, with application to speaker recognition

机译:隐马尔可夫模型中发言者和语言的信息理论分解,应用于扬声器识别

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An information theoretic approach to speech modeling with prior statistical knowledge is proposed. Using the concept of minimum discrimination information (MDI), a model of speech can be factored into a prior distribution and an exponential correction term, depending on the specific training data. The discrimination information measures the statistical deviations of the training data from a prior model, in a way that is known to be optimal in a well defined sense. The minimization of the discrimination information, subject to the given training data as constraints, yields a set of Lagrange multipliers. These multipliers serve to characterize the part of the training data which is not described by the prior model. The problem of separating the speaker dependent part from a 'universal' speaker independent prior in hidden Markov models is studied in this framework and a practical method for achieving this separation is derived. As an example, universal hidden Markov priors for isolated English digits are trained for male and female speakers using a database of 100 speakers and 20000 spoken digits. The speaker specific part is modeled by the individual Lagrange multipliers obtained by minimizing the discrimination information between the training data and the corresponding prior language model.
机译:提出了利用现有统计知识语音建模的信息理论方法。使用最小歧视信息(MDI)的概念,可以将语音模型分配到先前分发和指数校正项,具体取决于特定的培训数据。歧视信息测量训练数据从先前模型的统计偏差,以众所周知的方式在明确的意义上是最佳的方式。通过给定的培训数据作为约束,辨别信息的最小化产生一组拉格朗日乘法器。这些乘法器用于表征现有模型未描述的训练数据的一部分。在该框架中研究了从隐藏的马尔可夫模型中的“通用”扬声器中分离扬声器依赖部件的问题,并衍生出实现这种分离的实用方法。作为一个例子,使用100个扬声器和20000个口语数字的数据库培训用于孤立英语数字的通用隐马尔可夫前锋。扬声器特定部分由通过通过最小化训练数据与相应的先前语言模型之间的辨别信息而获得的单个拉格朗日乘法器进行建模。

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