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A Hybrid Speech Recognizer Combining Hmms and Polynomial Classification

机译:Hmms与多项式分类相结合的混合语音识别器

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In this paper, we present a hybrid speech recognizer combining Hidden Markov Models (HMMs) and a polynomial classifier. In our approach the emission probabilities are not modeled as a mixture of Gaussians but are calculated by the polynomial classifier. However, we do not apply the classifier directly to the feature vector but we make use of the density values of L Gaussians cluatering the feature space. That means we model the emission probability as a polynomial of Gaussian distributions of n-th degree. As most of these density values are approximately zero for a single feature vector the calcualtion of a polynomial can be done very efficiently. The usefulness of this hybrid approach was successfuly tested on a large conversational speech recognition task.
机译:在本文中,我们提出了一种混合语音识别器,它结合了隐马尔可夫模型(HMM)和多项式分类器。在我们的方法中,排放概率不是建模为高斯混合模型,而是由多项式分类器计算得出。但是,我们没有将分类器直接应用于特征向量,而是利用了L高斯分布在特征空间上的密度值。这意味着我们将发射概率建模为n级高斯分布的多项式。由于对于单个特征矢量而言,大多数这些密度值近似为零,因此可以非常有效地完成多项式的计算。这种混合方法的有效性已在大型对话语音识别任务上得到了成功测试。

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