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A Specialized WFST Approach for Class Models and Dynamic Vocabulary

机译:一种专业的WFST方法,适用于类模型和动态词汇

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In this paper we describe a specialized Weighted Finite State Transducer (WFST) framework for handling class language models and dynamic vocabulary in automatic speech recognition. The proposed framework has several important features, a fused composition algorithm that substantially reduces the memory usage in comparison to generic WFST operations, and an efficient dynamic vocabulary scheme that allows for arbitrary new words to be added to class based language models on-the-fly without requiring any changes to the pre-compiled transducers. The dynamic vocabulary approach achieves very low run-time costs by representing the dynamic vocabulary items inserted into the language model from an optimum set of existing lexicon items. Experimental results on a voice search task illustrate the low runtime costs of the proposed approach.
机译:在本文中,我们描述了一种用于处理类语言模型和自动语音识别中的动态词汇的专用加权有限状态换能器(WFST)框架。所提出的框架具有几个重要的特征,这是一个融合的组合算法,它与通用WFST操作相比,基本上减少了内存使用,以及一种有效的动态词汇表,它允许随行添加到基于类的语言模型中的任意新单词不需要对预编译的传感器进行任何更改。动态词汇方法通过代表从最佳的现有词典项目中插入语言模型中的动态词汇表来实现非常低的运行时间成本。语音搜索任务的实验结果说明了所提出的方法的低运行时成本。

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