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Graphical model architectures for speech recognition

机译:用于语音识别的图形模型架构

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摘要

This article discusses the foundations of the use of graphical models for speech recognition as presented in J. R. Deller et al. (1993), X. D. Huang et al. (2001), F. Jelinek (19970, L. R. Rabiner and B. -H. Juang (1993) and S. Young et al. (1990) giving detailed accounts of some of the more successful cases. Our discussion employs dynamic Bayesian networks (DBNs) and a DBN extension using the Graphical Model Toolkit's (GMTK's) basic template, a dynamic graphical model representation that is more suitable for speech and language systems. While this article concentrates on speech recognition, it should be noted that many of the ideas presented here are also applicable to natural language processing and general time-series analysis.
机译:本文讨论了J. R. Deller等人提出的将图形模型用于语音识别的基础。 (1993),X.D.Huang等人。 (2001),F。Jelinek(19970,LR Rabiner和B.-H. Juang(1993)和S. Young等人(1990))详细介绍了一些较成功的案例。我们的讨论采用动态贝叶斯网络( DBN)和使用图形模型工具包(GMTK)基本模板的DBN扩展,这是一种更适合语音和语言系统的动态图形模型表示,尽管本文着重于语音识别,但应注意,本文提出的许多想法这里也适用于自然语言处理和常规时间序列分析。

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