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Integrated optimization of dynamic feature parameters for hidden Markov modeling of speech

机译:语音隐马尔可夫建模的动态特征参数集成优化

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摘要

Construction of dynamic (delta) features of speech, which has been in the past confined to only the preprocessing domain in the hidden Markov modeling (HMM) framework, is generalized and formulated as an integrated speech modeling problem. This generalization allows us to utilize state-dependent weights to transform static speech features into dynamic ones. In this letter, we describe a rigorous theoretical framework that naturally incorporates the generalized dynamic-parameter technique and present a maximum-likelihood-based algorithm for integrated optimization of the conventional HMM parameters and of the time-varying weighting functions that define the dynamic features of speech.
机译:语音的动态(增量)特征的构建在过去仅局限于隐马尔可夫建模(HMM)框架中的预处理域,被概括并表述为集成语音建模问题。这种概括使我们能够利用状态相关的权重将静态语音特征转换为动态语音特征。在这封信中,我们描述了一个严格的理论框架,该框架自然地包含了广义的动态参数技术,并提出了一种基于最大似然性的算法,用于对常规HMM参数和时变加权函数进行综合优化,从而定义了HMM的动态特征。言语。

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