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Testing the Value of a Time-based Language Model for Speech Recognition

机译:测试基于时间的语言模型在语音识别中的价值

摘要

Speech recognition relies on the language model in order to decode an utterance, and in general a better language model improves the performance of a speech recognizer. We have recently found that a time-based language model can improve on a standard trigram language model in terms of perplexity. This technical report presents the evaluation of this new language model in the context of speech recognition. First, a basic speech recognizer was built using the HTK tool. Then the recognizer was run using the standard language model and using the time-based one. On a testset of 39,147 words from the Switchboard corpus, there was a slight improvement, with the percentage of words correctly recognized going from 11.31% to 11.40%.
机译:语音识别依赖于语言模型来解码话语,通常,更好的语言模型可以提高语音识别器的性能。最近我们发现,基于时间的语言模型可以在复杂性方面改进标准的Trigram语言模型。本技术报告介绍了在语音识别环境中对该新语言模型的评估。首先,使用HTK工具构建了基本的语音识别器。然后使用标准语言模型和基于时间的模型运行识别器。在来自Switchboard语料库的39,147个单词的测试集上,略有改进,正确识别的单词比例从11.31%升至11.40%。

著录项

  • 作者

    Kiran Nisha; Ward Nigel;

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  • 年度 2008
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  • 原文格式 PDF
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