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Discriminative semi-parametric trajectory model for speech recognition

机译:语音识别的区分性半参数轨迹模型

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Hidden Markov models (HMMs) are the most commonly used acoustic model for speech recognition. In HMMs, the probability of successive observations is assumed independent given the state sequence. This is known as the conditional independence assumption. Consequently, the temporal (inter-frame) correlations are poorly modelled. This limitation may be reduced by incorporating some form of trajectory modelling. In this paper, a general perspective on trajectory modelling is provided, where time-varying model parameters are used for the Gaussian components. A discriminative semi-parametric trajectory model is then described where the Gaussian mean vector and covariance matrix parameters vary with time. The time variation is modelled as a semi-parametric function of the observation sequence via a set of cent-roids in the acoustic space. The model parameters are estimated discriminatively using the minimum phone error (MPE) criterion. The performance of these models is investigated and benchmarked against a state-of-the-art CUHTK Mandarin evaluation systems.
机译:隐马尔可夫模型(HMM)是语音识别中最常用的声学模型。在HMM中,假定状态序列给定,连续观察的概率是独立的。这称为条件独立性假设。因此,时间(帧间)相关性建模较差。通过合并某种形式的轨迹建模可以减少这种限制。在本文中,提供了关于轨迹建模的一般观点,其中时变模型参数用于高斯分量。然后描述了一个区分半参数轨迹模型,其中高斯平均矢量和协方差矩阵参数随时间变化。时间变化通过声学空间中的一组质心建模为观测序列的半参数函数。使用最小电话错误(MPE)判别性地估计模型参数。这些模型的性能已根据最新的CUHTK普通话评估系统进行了调查和基准测试。

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