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Robust triphone mapping for acoustic modeling

机译:用于声学建模的强大Triphone映射

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In this paper we revisit the recently proposed triphone mapping as an alternative to decision tree state clustering. We generalize triphone mapping to Kullback-Leibler based hidden Markov models for acoustic modeling and propose a modified training procedure for the Gaussian mixture model based acoustic modeling. We compare the triphone mapping to decision tree state clustering on the Wall Street Journal task as well as in the context of an under-resourced language by using Greek data from the SpeechDat(II) corpus. Experiments reveal that triphone mapping has the best overall performance and is robust against varying the acoustic modeling technique as well as variable amounts of training data.
机译:在本文中,我们重新审视最近提出的Triphone映射作为决策树状态聚类的替代方案。我们将Triphone映射推广到基于Kullback-Leibler的隐马尔可夫模型,用于声学建模,并提出了一种基于高斯混合模型的声学建模的改进的培训过程。我们将Trighone映射与决策树状态集群进行比较在Wall Street Journal Task上的决策树状态,以及通过使用来自SpeathDAT(II)语料库的希腊数据的资源不足的语言的背景。实验表明,Triphone映射具有最佳的整体性能,并且对不同的声学建模技术以及可变量的培训数据具有稳健性。

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