LEMAS:一个包含生成式语音模型的150K小时大规模可扩展多语言音频套件 / LEMAS: Large A 150K-Hour Large-scale Extensible Multilingual Audio Suite with Generative Speech Models
1️⃣ 一句话总结
这篇论文发布了一个目前最大的开源多语言语音数据集LEMAS,并基于它训练了两个高效的语音生成与编辑模型,证明了该数据集能有效推动高质量、多语言的语音合成与编辑技术发展。
We present the LEMAS-Dataset, which, to our knowledge, is currently the largest open-source multilingual speech corpus with word-level timestamps. Covering over 150,000 hours across 10 major languages, LEMAS-Dataset is constructed via a efficient data processing pipeline that ensures high-quality data and annotations. To validate the effectiveness of LEMAS-Dataset across diverse generative paradigms, we train two benchmark models with distinct architectures and task specializations on this dataset. LEMAS-TTS, built upon a non-autoregressive flow-matching framework, leverages the dataset's massive scale and linguistic diversity to achieve robust zero-shot multilingual synthesis. Our proposed accent-adversarial training and CTC loss mitigate cross-lingual accent issues, enhancing synthesis stability. Complementarily, LEMAS-Edit employs an autoregressive decoder-only architecture that formulates speech editing as a masked token infilling task. By exploiting precise word-level alignments to construct training masks and adopting adaptive decoding strategies, it achieves seamless, smooth-boundary speech editing with natural transitions. Experimental results demonstrate that models trained on LEMAS-Dataset deliver high-quality synthesis and editing performance, confirming the dataset's quality. We envision that this richly timestamp-annotated, fine-grained multilingual corpus will drive future advances in prompt-based speech generation systems.
LEMAS:一个包含生成式语音模型的150K小时大规模可扩展多语言音频套件 / LEMAS: Large A 150K-Hour Large-scale Extensible Multilingual Audio Suite with Generative Speech Models
这篇论文发布了一个目前最大的开源多语言语音数据集LEMAS,并基于它训练了两个高效的语音生成与编辑模型,证明了该数据集能有效推动高质量、多语言的语音合成与编辑技术发展。
源自 arXiv: 2601.04233