藏语TTS:基于大模型适配的低资源藏语语音合成 / Tibetan-TTS:Low-Resource Tibetan Speech Synthesis with Large Model Adaptation
1️⃣ 一句话总结
本文提出了首个基于大模型的藏语语音合成系统,通过改进文本表示、分词器适配和跨语言自适应训练,在数据稀缺的情况下实现了高质量、自然的藏语语音输出,音质和发音准确率均超过商用接口。
Tibetan text-to-speech (TTS) has long been challenged by scarce speech resources, significant dialectal variation, and the complex mapping between written text and spoken pronunciation. To address these issues, this work presents, to the best of our knowledge, the first large-model-based Tibetan TTS system in the industry, built upon a large speech synthesis model developed by Xingchen AGI Lab. The proposed system integrates data quality enhancement, Tibetan-oriented text representation and tokenizer adaptation, and cross-lingual adaptive training for low-resource Tibetan speech synthesis. Experimental results show that the system can generate stable, natural, and intelligible Tibetan speech under low-resource conditions. In subjective evaluation, the MOS scores of the syllable-level and BPE-based systems reach 4.28 and 4.35, while their pronunciation accuracies reach 97.6% and 96.6%, respectively, outperforming an external commercial Tibetan TTS interface. These results demonstrate that combining a large-model backbone with Tibetan-oriented text representation adaptation and cross-lingual adaptive training enables highly usable low-resource Tibetan speech synthesis, and also provides a technical foundation for future unified multi-dialect Tibetan speech synthesis.
藏语TTS:基于大模型适配的低资源藏语语音合成 / Tibetan-TTS:Low-Resource Tibetan Speech Synthesis with Large Model Adaptation
本文提出了首个基于大模型的藏语语音合成系统,通过改进文本表示、分词器适配和跨语言自适应训练,在数据稀缺的情况下实现了高质量、自然的藏语语音输出,音质和发音准确率均超过商用接口。
源自 arXiv: 2605.02496