基于半隐马尔可夫模型的汉藏双语跨语言语音转换

Zhenye Gan, Jiaolong Jiang, Guangying Zhao, Yajing Yan
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引用次数: 0

摘要

近年来,基于深度学习的语音转换(VC)大大提高了语音转换系统的性能。然而,这种系统通常需要大量的源语说话人和目标说话人的平行语料库,而汉藏双语的平行语料库很难获得。为了解决这一问题,我们提出了一种基于半隐马尔可夫模型(HSMM)的语音识别方法,该方法采用了汉藏双语平均语音模型和说话人自适应技术。该方法不需要并行语料库。首先利用混合语言多说话人语料库训练得到汉藏双语平均语音模型,然后利用少量源说话人语料库对平均语音模型进行自适应转换,得到与说话人相关的声学模型。最后,将源说话人的语音对应的文本进行翻译,并将翻译文本的上下文相关标签输入到说话人相关声学模型中,输出转换后的语音,实现跨语言VC。实验结果表明了该方法的有效性,转换后的语音MOS得分:3.37分;DMOS得分:3.00分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mandarin-Tibetan Bilingual Cross-language Voice Conversion Based on Semi-hidden Markov Model
In recent years, deep learning based voice conversion (VC) has significantly improved the performance of the conversion system. However, such systems generally require a large amount of parallel corpus from the source speakers and the target speaker, and the parallel corpus of Mandarin-Tibetan bilingual is difficult to obtain. In order to solve this problem, we propose a method based on the semi-hidden Markov model (HSMM) using Mandarin-Tibetan bilingual average voice model and speaker adaptive technology for VC. This method does not require parallel corpus. Firstly, it obtains the Mandarin-Tibetan bilingual average voice model using mixed language multi-speaker corpus training, then uses a small number of source speaker corpora to adaptively convert the average voice model to obtain the speaker-related acoustic model. Finally, the text corresponding to the source speaker's speech is translated, and the context-dependent labels of the translated text is input into the speaker-related acoustic model, the converted speech is output to realize cross-language VC. The experimental results show the effectiveness of this method, the converted speech MOS score: 3.37 points; DMOS score: 3.00 points.
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