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Main Authors: Zhang, Xueyao, Zhang, Junan, Wang, Yuancheng, Wang, Chaoren, Chen, Yuanzhe, Jia, Dongya, Chen, Zhuo, Wu, Zhizheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.16332
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author Zhang, Xueyao
Zhang, Junan
Wang, Yuancheng
Wang, Chaoren
Chen, Yuanzhe
Jia, Dongya
Chen, Zhuo
Wu, Zhizheng
author_facet Zhang, Xueyao
Zhang, Junan
Wang, Yuancheng
Wang, Chaoren
Chen, Yuanzhe
Jia, Dongya
Chen, Zhuo
Wu, Zhizheng
contents Controllable human voice generation, particularly for expressive domains like singing, remains a significant challenge. This paper introduces Vevo2, a unified framework for controllable speech and singing voice generation. To tackle issues like the scarcity of annotated singing data and to enable flexible controllability, Vevo2 introduces two audio tokenizers: (1) a unified music-notation-free prosody tokenizer that captures prosody and melody from speech, singing, and even instrumental sounds, and (2) a unified content-style tokenizer that encodes linguistic content, prosody, and style for both speech and singing, while enabling timbre disentanglement. Vevo2 consists of an auto-regressive (AR) content-style modeling stage, which aims to enable controllability over text, prosody, and style, as well as a flow-matching acoustic modeling stage that allows for timbre control. Particularly, during the speech-singing joint training of the AR model, we propose both explicit and implicit prosody learning strategies to bridge speech and singing voice. Moreover, to further enhance the Vevo2's ability to follow text and prosody, we design a multi-objective post-training task that integrates both intelligibility and prosody similarity alignment. Experimental results show that the unified modeling in Vevo2 brings mutual benefits to both speech and singing voice generation. Additionally, Vevo2's effectiveness across a wide range of synthesis, conversion, and editing tasks for both speech and singing further demonstrates its strong generalization ability and versatility. Audio samples are are available at https://versasinger.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2508_16332
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Vevo2: A Unified and Controllable Framework for Speech and Singing Voice Generation
Zhang, Xueyao
Zhang, Junan
Wang, Yuancheng
Wang, Chaoren
Chen, Yuanzhe
Jia, Dongya
Chen, Zhuo
Wu, Zhizheng
Sound
Artificial Intelligence
Computation and Language
Controllable human voice generation, particularly for expressive domains like singing, remains a significant challenge. This paper introduces Vevo2, a unified framework for controllable speech and singing voice generation. To tackle issues like the scarcity of annotated singing data and to enable flexible controllability, Vevo2 introduces two audio tokenizers: (1) a unified music-notation-free prosody tokenizer that captures prosody and melody from speech, singing, and even instrumental sounds, and (2) a unified content-style tokenizer that encodes linguistic content, prosody, and style for both speech and singing, while enabling timbre disentanglement. Vevo2 consists of an auto-regressive (AR) content-style modeling stage, which aims to enable controllability over text, prosody, and style, as well as a flow-matching acoustic modeling stage that allows for timbre control. Particularly, during the speech-singing joint training of the AR model, we propose both explicit and implicit prosody learning strategies to bridge speech and singing voice. Moreover, to further enhance the Vevo2's ability to follow text and prosody, we design a multi-objective post-training task that integrates both intelligibility and prosody similarity alignment. Experimental results show that the unified modeling in Vevo2 brings mutual benefits to both speech and singing voice generation. Additionally, Vevo2's effectiveness across a wide range of synthesis, conversion, and editing tasks for both speech and singing further demonstrates its strong generalization ability and versatility. Audio samples are are available at https://versasinger.github.io/.
title Vevo2: A Unified and Controllable Framework for Speech and Singing Voice Generation
topic Sound
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2508.16332