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SegTune: Structured and Fine-Grained Control for Song Generation

21 October 2025
Pengfei Cai
Joanna Wang
Haorui Zheng
X. Li
Zihao Ji
Teng Ma
Zhongliang Liu
Chen Zhang
Pengfei Wan
ArXiv (abs)PDFHTML
Main:12 Pages
4 Figures
Bibliography:3 Pages
9 Tables
Appendix:2 Pages
Abstract

Recent advancements in song generation have shown promising results in generating songs from lyrics and/or global text prompts. However, most existing systems lack the ability to model the temporally varying attributes of songs, limiting fine-grained control over musical structure and dynamics. In this paper, we propose SegTune, a non-autoregressive framework for structured and controllable song generation. SegTune enables segment-level control by allowing users or large language models to specify local musical descriptions aligned to songthis http URLsegmental prompts are injected into the model by temporally broadcasting them to corresponding time windows, while global prompts influence the whole song to ensure stylistic coherence. To obtain accurate segment durations and enable precise lyric-to-music alignment, we introduce an LLM-based duration predictor that autoregressively generates sentence-level timestamped lyrics in LRC format. We further construct a large-scale data pipeline for collecting high-quality songs with aligned lyrics and prompts, and propose new evaluation metrics to assess segment-level alignment and vocal attribute consistency. Experimental results show that SegTune achieves superior controllability and musical coherence compared to existing baselines. Seethis https URLfor demos of our work.

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