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Adapting a hidden Markov sound model in a speech recognition lexicon

机译:在语音识别词典中适应隐藏的马尔可夫声音模型

摘要

When adapting a lexicon in a speech recognition system, a code book of hidden Markov sound models made available with a speech recognition system is adapted for specific applications. These applications are thereby defined by a lexicon of the application that is modified by the user. The adaption ensues during the operation and occurs by a shift of the stored mid-point vector of the probability density distributions of hidden Markov models in the direction of a recognized feature vector of sound expressions and with reference to the specifically employed hidden Markov models. Compared to standard methods, this method has the advantage that it ensues on-line and that it assures a very high recognition rate given a low calculating outlay. Further, the outlay for training specific sound models for corresponding applications is avoided. An automatic adaption to foreign languages can ensue by applying specific hidden Markov models from multi-lingual phonemes wherein the similarities of sounds across various languages is exploited. Given the methods for the acoustically phonetic modelling thereby employed, both language-specific as well as language-independent properties are taken into consideration in the combination of the probability densities for different hidden Markov sound models in various languages.
机译:在语音识别系统中改编词典时,语音识别系统提供的隐马尔可夫声音模型的代码簿适用于特定应用。因此,这些应用程序由用户修改的应用程序词典定义。适应在操作期间随之发生,并且是通过将所存储的隐马尔可夫模型的概率密度分布的中点矢量朝着声音表达的公认特征向量的方向并参考特定使用的隐马尔可夫模型进行的偏移而发生的。与标准方法相比,此方法的优点是可以在线进行,并且在计算费用较低的情况下可以确保很高的识别率。此外,避免了用于训练用于相应应用的特定声音模型的费用。通过应用来自多种语言音素的特定隐式马尔可夫模型,可以自动适应外语,其中利用了跨各种语言的声音相似性。给定由此采用的用于声学语音建模的方法,在针对各种语言的不同隐马尔可夫声音模型的概率密度的组合中,既要考虑语言的特性又要考虑与语言无关的特性。

著录项

  • 公开/公告号US6460017B1

    专利类型

  • 公开/公告日2002-10-01

    原文格式PDF

  • 申请/专利权人 SIEMENS AKTIENGESELLSCHAFT;

    申请/专利号US19990254785

  • 发明设计人 UDO BUB;HARALD HGE;JOACHIM KHLER;

    申请日1999-06-10

  • 分类号G10L150/00;

  • 国家 US

  • 入库时间 2022-08-22 00:47:19

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