HeartMuLa:一个开源音乐基础模型家族 / HeartMuLa: A Family of Open Sourced Music Foundation Models
1️⃣ 一句话总结
这篇论文介绍了一个名为HeartMuLa的开源音乐基础模型家族,它包含多个专门组件,能够理解和生成高质量音乐,并首次证明仅用学术规模的资源就能复现出接近商业级水准的音乐AI系统。
We present a family of open-source Music Foundation Models designed to advance large-scale music understanding and generation across diverse tasks and modalities. Our framework consists of four major components: (1) HeartCLAP, an audio-text alignment model; (2) HeartTranscriptor, a robust lyric recognition model optimized for real-world music scenarios; and (3) HeartCodec, a low-frame-rate (12.5 Hz) yet high-fidelity music codec tokenizer that captures long-range musical structure while preserving fine-grained acoustic details and enabling efficient autoregressive modeling; (4) HeartMuLa, an LLM-based song generation model capable of synthesizing high-fidelity music under rich, user-controllable conditions (e.g., textual style descriptions, lyrics, and reference audio). In addition, it provides two specialized modes: (i) fine-grained musical attribute control, which allows users to specify the style of different song sections (e.g., intro, verse, chorus) using natural language prompts; and (ii) short, engaging music generation, which is suitable as background music for short videos. Lastly, HeartMuLa improves significantly when scaled to 7B parameters. For the first time, we show that a Suno-level, commercial-grade system can be reproduced using academic-scale data and GPU resources. We expect these foundation models to serve as strong baselines for future research and to facilitate practical applications in multimodal content production.
HeartMuLa:一个开源音乐基础模型家族 / HeartMuLa: A Family of Open Sourced Music Foundation Models
这篇论文介绍了一个名为HeartMuLa的开源音乐基础模型家族,它包含多个专门组件,能够理解和生成高质量音乐,并首次证明仅用学术规模的资源就能复现出接近商业级水准的音乐AI系统。
源自 arXiv: 2601.10547