基于序列标注的汉语拼音标注音调

Zhaopeng Qian, K. Xiao
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引用次数: 1

摘要

在正常语音中,一般采用基频(F0)作为声调识别的线索。无F0的耳语语音语音识别可以基于时间和频谱线索。而固定F0的普通话电喉语音没有声调信息。因此,汉语EL语音的声调识别是非常困难的。而对于汉语语音语调识别的研究还很不足。本文提出了一种基于语境信息的汉语拼音声调标注方法,用于无声调信息的汉语语音声调识别。实验结果表明,基于测试数据集的准确率、召回率和F值均在97%以上。语义信息量的多少影响了所提方法的性能。如果语义信息量少,则声调标注的准确性较差。结果表明,该方法具有良好的精度和鲁棒性。该方法可以在没有音调信息的情况下,仅根据上下文信息对拼音进行音调标注。该方法可以对声调语言(如普通话语音)进行声调标注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tagging Tone for Mandarin Pinyin Based on Sequence Labelling
Generally, fundamental frequency (F0) is applied as the clue for tone recognition in normal speech. Tone recognition in whisper speech without F0 could be based on the temporal and spectral cues. However, the Mandarin Electro-Laryngeal (EL) speech with fixed F0 has no tone information. Therefore, the tone recognition of Mandarin EL speech is so difficult. And the researches about tone recognition for Mandarin EL speech is insufficient. In this paper, a new method labelling the tone for pinyin is proposed based on the context information to identify the tone of Mandarin speech without tone information. The experiment result shows that the precision, recall and the F value are all above 97% based on the test dataset. The amount of semantic information influences the performance of proposed method. If the amount of semantic information is little, the accuracy of tone labelling would be poor. The result shows that the proposed method has a good precision and robustness. The method can label the tone for pinyin without any tone information only based on the context information. The proposed method can label tones for tonal language, such as the Mandarin speech.
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