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Main Authors: He, Zhanhong, Cooper, David, Huang, Defeng, Togneri, Roberto
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.07751
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author He, Zhanhong
Cooper, David
Huang, Defeng
Togneri, Roberto
author_facet He, Zhanhong
Cooper, David
Huang, Defeng
Togneri, Roberto
contents Modern music producers commonly use MIDI (Musical Instrument Digital Interface) to store their musical compositions. However, MIDI files created with digital software may lack the expressive characteristics of human performances, essentially leaving the velocity parameter - a control for note loudness - undefined, which defaults to a flat value. The task of filling MIDI velocity is termed MIDI velocity prediction, which uses regression models to enhance music expressiveness by adjusting only this parameter. In this paper, we introduce the U-Net, a widely adopted architecture in image colorization, to this task. By conceptualizing MIDI data as images, we adopt window attention and develop a custom loss function to address the sparsity of MIDI-converted images. Current dataset availability restricts our experiments to piano data. Evaluated on the MAESTRO v3 and SMD datasets, our proposed method for filling MIDI velocity outperforms previous approaches in both quantitative metrics and qualitative listening tests.
format Preprint
id arxiv_https___arxiv_org_abs_2508_07751
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Filling MIDI Velocity using U-Net Image Colorizer
He, Zhanhong
Cooper, David
Huang, Defeng
Togneri, Roberto
Sound
Audio and Speech Processing
Modern music producers commonly use MIDI (Musical Instrument Digital Interface) to store their musical compositions. However, MIDI files created with digital software may lack the expressive characteristics of human performances, essentially leaving the velocity parameter - a control for note loudness - undefined, which defaults to a flat value. The task of filling MIDI velocity is termed MIDI velocity prediction, which uses regression models to enhance music expressiveness by adjusting only this parameter. In this paper, we introduce the U-Net, a widely adopted architecture in image colorization, to this task. By conceptualizing MIDI data as images, we adopt window attention and develop a custom loss function to address the sparsity of MIDI-converted images. Current dataset availability restricts our experiments to piano data. Evaluated on the MAESTRO v3 and SMD datasets, our proposed method for filling MIDI velocity outperforms previous approaches in both quantitative metrics and qualitative listening tests.
title Filling MIDI Velocity using U-Net Image Colorizer
topic Sound
Audio and Speech Processing
url https://arxiv.org/abs/2508.07751