Adding filled pauses and disfluent events into language models for speech recognition

J. Staš, D. Hládek, J. Juhár
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引用次数: 5

Abstract

The variation of spontaneous speech is much larger when compared to the planned speech because of speech disruption and a lot of ambiguities in conversations. These events cannot be properly evaluated during search and decoding in speech recognition systems and various errors occur in the output hypotheses. One possible solution is to include filled pauses and disfluent events into the training data for statistical language modeling. This paper describes experimental results of modeling the most frequent filled pauses and disfluent events in the annotated Slovak speech databases. We have significantly improved the robustness and speech recognition performance up to 10.88% on average in the transcription of parliament speech by correct representation of selected prosodic events and non-speech sounds in speech recognition dictionary and language models.
在语音识别的语言模型中添加填充停顿和不连贯事件
由于言语中断和对话中的许多歧义,自发言语的变化要比计划言语大得多。在语音识别系统的搜索和解码过程中,这些事件无法得到正确的评估,并且在输出假设中会出现各种错误。一种可能的解决方案是在统计语言建模的训练数据中包含填充停顿和不连贯事件。本文描述了对标注斯洛伐克语语音数据库中最常见的填充停顿和不连贯事件进行建模的实验结果。我们通过在语音识别词典和语言模型中正确表示选定的韵律事件和非语音,显著提高了议会演讲转录的鲁棒性和语音识别性能,平均可达10.88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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