基于N-gram和决策树的文字识别

J. Hakkinen, Jilei Tian
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引用次数: 54

摘要

随着对多语言语音识别器需求的增加,将自动语言识别、特定语言语音建模和独立于语言的声学模型相结合的系统的开发变得越来越重要。当识别语法是动态的并且直接从书面文本获得时,必须使用该文本识别与每个语法项相关联的语言。文献中提出的许多方法需要相当大量的文本,而这些文本可能并不总是可用的。本文介绍了一种基于文本的语言识别系统,用于识别短词的语言,如专有名词。比较了两种不同的方法。首先对文献中常用的n-gram方法进行了回顾和进一步的改进。我们还提出了一种基于决策树的简单语言识别方法。首先在一个基于文本的语言识别任务中对这些方法进行评估。这两种方法还作为多语言语音识别任务的预处理器进行了测试,其中必须确定每个文本项的语言,以便选择正确的文本到发音映射。实验结果表明,该方法性能良好,值得进一步开发。
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n-gram and decision tree based language identification for written words
As the demand for multilingual speech recognizers increases, the development of systems which combine automatic language identification, language-specific pronunciation modeling and language-independent acoustic models becomes increasingly important. When the recognition grammar is dynamic and obtained directly from written text, the language associated with each grammar item has to be identified using that text. Many methods proposed in the literature require fairly large amounts of text, which may not always be available. This paper describes a text-based language identification system developed for the identification of the language of short words, e.g., proper names. Two different approaches are compared. The n-gram method commonly used in the literature is first reviewed and further enhanced. We also propose a simple method for language identification that is based on decision trees. The methods are first evaluated in a text-based language identification task. Both methods are also tested as preprocessors for a multilingual speech recognition task, where the language of each text item has to be determined, in order to choose the correct text-to-pronunciation mapping. The experimental results show that the proposed methods perform very well, and merit further development.
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