TY - GEN
T1 - DiffRhythm+
T2 - 2025 IEEE Automatic Speech Recognition and Understanding Workshop, ASRU 2025
AU - Chen, Huakang
AU - Jiang, Yuepeng
AU - Ma, Guobin
AU - Hao, Chunbo
AU - Wang, Shuai
AU - Yao, Jixun
AU - Ning, Ziqian
AU - Meng, Meng
AU - Luan, Jian
AU - Xie, Lei
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Songs, as a central form of musical art, exemplify the richness of human intelligence and creativity. While recent advances in generative modeling have enabled notable progress in long-form song generation, current systems for fulllength song synthesis still face major challenges, including data imbalance, insufficient controllability, and inconsistent musical quality. DiffRhythm, a pioneering diffusion-based model, advanced the field by generating full-length songs with expressive vocals and accompaniment. However, its performance was constrained by an unbalanced model training dataset and limited controllability over musical style, resulting in noticeable quality disparities and restricted creative flexibility. To address these limitations, we propose DiffRhythm+, an enhanced diffusionbased framework for controllable and flexible full-length song generation. DiffRhythm+ leverages a substantially expanded and balanced training dataset to mitigate issues such as repetition and omission of lyrics, while also fostering the emergence of richer musical skills and expressiveness. The framework introduces a multi-modal style conditioning strategy, enabling users to precisely specify musical styles through both descriptive text and reference audio, thereby significantly enhancing creative control and diversity. We further introduce direct performance optimization aligned with user preferences, guiding the model toward consistently preferred outputs across evaluation metrics. Extensive experiments demonstrate that DiffRhythm+ achieves significant improvements in naturalness, arrangement complexity, and listener satisfaction over previous systems. Audio samples are available at https://longwaytog0.github.io/DiffRhythmPlus/.
AB - Songs, as a central form of musical art, exemplify the richness of human intelligence and creativity. While recent advances in generative modeling have enabled notable progress in long-form song generation, current systems for fulllength song synthesis still face major challenges, including data imbalance, insufficient controllability, and inconsistent musical quality. DiffRhythm, a pioneering diffusion-based model, advanced the field by generating full-length songs with expressive vocals and accompaniment. However, its performance was constrained by an unbalanced model training dataset and limited controllability over musical style, resulting in noticeable quality disparities and restricted creative flexibility. To address these limitations, we propose DiffRhythm+, an enhanced diffusionbased framework for controllable and flexible full-length song generation. DiffRhythm+ leverages a substantially expanded and balanced training dataset to mitigate issues such as repetition and omission of lyrics, while also fostering the emergence of richer musical skills and expressiveness. The framework introduces a multi-modal style conditioning strategy, enabling users to precisely specify musical styles through both descriptive text and reference audio, thereby significantly enhancing creative control and diversity. We further introduce direct performance optimization aligned with user preferences, guiding the model toward consistently preferred outputs across evaluation metrics. Extensive experiments demonstrate that DiffRhythm+ achieves significant improvements in naturalness, arrangement complexity, and listener satisfaction over previous systems. Audio samples are available at https://longwaytog0.github.io/DiffRhythmPlus/.
KW - diffusion model
KW - lyrics-to-song
KW - multi-modal
KW - preference optimization
KW - song generation
UR - https://www.scopus.com/pages/publications/105036492277
U2 - 10.1109/ASRU65441.2025.11434644
DO - 10.1109/ASRU65441.2025.11434644
M3 - 会议稿件
AN - SCOPUS:105036492277
T3 - ASRU 2025 - 2025 IEEE Automatic Speech Recognition and Understanding Workshop
BT - ASRU 2025 - 2025 IEEE Automatic Speech Recognition and Understanding Workshop
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 6 December 2025 through 10 December 2025
ER -