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PHMM based asynchronous acoustic model for Chinese large vocabulary continuous speech recognition

机译:基于PHMM的汉语大词汇量连续语音识别异步声学模型

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In this paper, we presented an asynchronous multiple stream based Chinese tonal acoustic modeling framework. In this framework, toneless phonetic units and tones are modeled separately with different acoustic features. During the training and decoding process, a set of models are coupled together with a product hidden Markov models (PHMM) to represent whole tonal phonetic units. Through this, a compound context dependent tonal model can be generated from a few simple models. Experiments show that such model scheme generates more compact and accurate model presentation and brings improvement on the performance for large vocabulary speech recognition tasks.
机译:在本文中,我们提出了一个基于异步多流的中国音调声学建模框架。在此框架中,无声的语音单元和声调分别以不同的声学特征建模。在训练和解码过程中,一组模型与乘积隐马尔可夫模型(PHMM)耦合在一起,以表示整个音调语音单元。通过这种方式,可以从一些简单的模型中生成依赖于上下文的复合音调模型。实验表明,这种模型方案可以生成更紧凑,更准确的模型表示,并可以改善大型词汇语音识别任务的性能。

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