缅甸语韵律单位边界的分析与预测

Peiying Li, Jian Yang, Feng Chen
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引用次数: 0

摘要

缅甸语属于汉藏语系藏缅语系的lolo - Myanmar分支,是一种声调语言。在语音合成的前端文本分析中,韵律结构分析和单元边界预测对语音合成的自然度至关重要。为了提高缅甸语语音合成的自然度,本文对韵律特征和韵律单位边界预测进行了研究。本文研究了韵律单元的大小和音节边界前后的音节时长。为了实现自动标注韵律单元边界,提出了一种基于分词文本和沉默时长相结合的标注方法。基于BiLSTM-CRF模型,我们设计并实现了一种预测缅甸语文本韵律单元边界的方法。最后,将边界预测结果应用到基于HMM的语音合成系统中,评价其自然度。实验结果表明,韵律边界自动标注和韵律单位边界预测方法可以提高语音合成的自然度。
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Analysis and Prediction of Myanmar Prosodic Unit Boundary
Myanmar belongs to the Lolo-Burmese sub-branch of the Tibeto-Burmese branch of the Sino-Tibetan language family and is a tonal language. In the front-end text analysis of speech synthesis, the prosodic structure analysis and unit's boundary prediction are crucial to the naturalness of speech synthesis. In order to improve the naturalness of Myanmar speech synthesis, this paper studies prosodic features and prosodic unit boundary prediction. The size of prosodic units and the duration of syllables before and after their boundaries have been studied in this paper. To realize automatic prosodic unit boundaries labeling, a method of labeling based on the combination of word segmentation text and silence duration is proposed. Based on BiLSTM-CRF model, we also have designed and implemented a method to predict the boundaries of prosodic units from Myanmar text. Finally, the boundary prediction results are applied to the speech synthesis system based on HMM to evaluate its naturalness. The experimental results show that our method of automatic prosodic boundary labeling and prosodic unit boundary prediction can improve the naturalness of speech synthesis.
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