MusRec: Zero-Shot Text-to-Music Editing via Rectified Flow and Diffusion Transformers
By: Ali Boudaghi, Hadi Zare
Potential Business Impact:
Changes real music with just words.
Music editing has emerged as an important and practical area of artificial intelligence, with applications ranging from video game and film music production to personalizing existing tracks according to user preferences. However, existing models face significant limitations, such as being restricted to editing synthesized music generated by their own models, requiring highly precise prompts, or necessitating task-specific retraining, thus lacking true zero-shot capability. leveraging recent advances in rectified flow and diffusion transformers, we introduce MusRec, a zero-shot text-to-music editing model capable of performing diverse editing tasks on real-world music efficiently and effectively. Experimental results demonstrate that our approach outperforms existing methods in preserving musical content, structural consistency, and editing fidelity, establishing a strong foundation for controllable music editing in real-world scenarios.
Similar Papers
MusRec: Zero-Shot Text-to-Music Editing via Rectified Flow and Diffusion Transformers
Sound
Changes real music with just words.
MusRec: Zero-Shot Text-to-Music Editing via Rectified Flow and Diffusion Transformers
Sound
Edit any song using just words.
RFM-Editing: Rectified Flow Matching for Text-guided Audio Editing
Sound
Changes sounds in audio using just words.