Noise-to-Notes: Diffusion-based Generation and Refinement for Automatic Drum Transcription
Yeung, Michael, Toyama, Keisuke, Teramoto, Toya, Takahashi, Shusuke, Kojima, Tamaki
–arXiv.org Artificial Intelligence
Automatic drum transcription (ADT) is traditionally formulated as a discriminative task to predict drum events from audio spectrograms. In this work, we redefine ADT as a conditional generative task and introduce Noise-to-Notes (N2N), a framework leveraging diffusion modeling to transform audio-conditioned Gaussian noise into drum events with associated velocities. This generative diffusion approach offers distinct advantages, including a flexible speed-accuracy trade-off and strong inpainting capabilities. However, the generation of binary onset and continuous velocity values presents a challenge for diffusion models, and to overcome this, we introduce an Annealed Pseudo-Huber loss to facilitate effective joint optimization. Finally, to augment low-level spectrogram features, we propose incorporating features extracted from music foundation models (MFMs), which capture high-level semantic information and enhance robustness to out-of-domain drum audio. Experimental results demonstrate that including MFM features significantly improves robustness and N2N establishes a new state-of-the-art performance across multiple ADT benchmarks.
arXiv.org Artificial Intelligence
Sep-29-2025
- Country:
- Asia > Japan > Honshū
- Chūbu > Toyama Prefecture
- Toyama (0.04)
- Kantō > Tokyo Metropolis Prefecture
- Tokyo (0.14)
- Chūbu > Toyama Prefecture
- Asia > Japan > Honshū
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- Research Report (0.70)
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- Media > Music (0.48)
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