Analysis of vowel deletion in continuous speech

R. G. Brunet, H. Murthy
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引用次数: 2

Abstract

Accurate transcription of the utterances during training is critical for recognition performance. The inherent properties of continuous/spontaneous speech across speakers, such as variation in pronunciation, poorly emphasized or over stressed words/sub-word units can lead to misalignment of the waveform at the sub-word unit level. The misalignment is caused by the deviation of the pronunciation from that defined by the pronunciation lexicon. This leads to insertion/deletion of subword units. This is primarily because the transcription is not specific to utterances. In this paper, an attempt is made to correct the transcription at the sub-word unit level using acoustic cues that are available in the waveform. Using sentence-level transcriptions, the transcription of a word is corrected in terms of the phonemes that make up the word. In particular, it is observed that vowels are either inserted or deleted. To support the proposed argument, mispronunciations in continuous speech are substantiated using signal processing and machine learning tools. An automatic data driven annotator exploiting the inferences drawn from the study is used to correct transcription errors. The results show that corrected pronunciations lead to higher likelihood for train utterances in the TIMIT corpus.
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连续语音中元音缺失现象分析
在训练过程中准确地转录话语对识别性能至关重要。说话者之间的连续/自发语音的固有特性,如发音的变化、单词/子单词单位的强调不足或过度强调,可能导致子单词单位级别的波形不对齐。这种不对齐是由发音与发音词典所定义的发音偏差引起的。这会导致插入/删除子词单位。这主要是因为转录不是针对话语的。在本文中,尝试使用波形中可用的声学线索来纠正子词单位级别的转录。使用句子级别的转录,单词的转录根据组成单词的音素进行校正。特别是,可以观察到元音被插入或删除。为了支持所提出的论点,使用信号处理和机器学习工具证实了连续语音中的错误发音。一个自动数据驱动的注释器利用从研究中得出的推论来纠正转录错误。结果表明,在TIMIT语料库中,正确的发音导致训练话语的可能性更高。
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