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首页> 外文期刊>Systems and Computers in Japan >An Extension of the State-Observation Dependency in Partly Hidden Markov Models and Its Application to Continuous Speech Recognition
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An Extension of the State-Observation Dependency in Partly Hidden Markov Models and Its Application to Continuous Speech Recognition

机译:部分隐藏马尔可夫模型中状态观察依存性的扩展及其在连续语音识别中的应用

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摘要

We extend the state-observation dependencies in a Partly Hidden Markov Model (PHMM) and apply this model to continuous speech recognition. In a PHMM the observations and state transitions are dependent on a series of hidden and observable states. In the standard formulation of a PHMM, the observations and state transitions are conditioned on the same hidden state and observable state variables. Here we also condition the observations and state transitions on the same hidden states but condition the observations and state transitions on different observation states, respectively. This simple improvement to the model gives it significant flexibility allowing it to model stochastic processes more precisely. In addition, by integrating the PHMM containing this extended state-observation dependency with a standard HMM we can construct a stochastic model that we call a Smoothed Partly Hidden Markov Model (SPHMM). Results of continuous speech recognition on a newspaper read-speech have shown reductions of 10 and 24% in the error rate using the PHMM and SPHMM, respectively, compared to a standard HMM thereby displaying the effectiveness of the proposed models.
机译:我们在部分隐藏马尔可夫模型(PHMM)中扩展了状态观察的依存关系,并将此模型应用于连续语音识别。在PHMM中,观察和状态转换取决于一系列隐藏和可观察的状态。在PHMM的标准公式中,观察和状态转换以相同的隐藏状态和可观察的状态变量为条件。在这里,我们还将条件和状态转换条件设置在相同的隐藏状态上,但将条件和状态转换条件设置在不同的观察状态上。对模型的这种简单改进为其提供了极大的灵活性,使其可以更精确地对随机过程进行建模。另外,通过将包含扩展状态观察依存关系的PHMM与标准HMM集成在一起,我们可以构建一个随机模型,我们将其称为平滑部分隐藏马尔可夫模型(SPHMM)。与标准HMM相比,使用PHMM和SPHMM在报纸阅读语音上进行连续语音识别的结果分别显示出10%和24%的错误率降低,从而证明了所提出模型的有效性。

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