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Bibliographic Details
Main Authors: Sajeer, Sahal, Patel, Krish, Chung, Oscar, Bae, Joel Song
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.08759
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author Sajeer, Sahal
Patel, Krish
Chung, Oscar
Bae, Joel Song
author_facet Sajeer, Sahal
Patel, Krish
Chung, Oscar
Bae, Joel Song
contents Music structure segmentation is a key task in audio analysis, but existing models perform poorly on Electronic Dance Music (EDM). This problem exists because most approaches rely on lyrical or harmonic similarity, which works well for pop music but not for EDM. EDM structure is instead defined by changes in energy, rhythm, and timbre, with different sections such as buildup, drop, and breakdown. We introduce EDMFormer, a transformer model that combines self-supervised audio embeddings using an EDM-specific dataset and taxonomy. We release this dataset as EDM-98: a group of 98 professionally annotated EDM tracks. EDMFormer improves boundary detection and section labelling compared to existing models, particularly for drops and buildups. The results suggest that combining learned representations with genre-specific data and structural priors is effective for EDM and could be applied to other specialized music genres or broader audio domains.
format Preprint
id arxiv_https___arxiv_org_abs_2603_08759
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EDMFormer: Genre-Specific Self-Supervised Learning for Music Structure Segmentation
Sajeer, Sahal
Patel, Krish
Chung, Oscar
Bae, Joel Song
Sound
Artificial Intelligence
Music structure segmentation is a key task in audio analysis, but existing models perform poorly on Electronic Dance Music (EDM). This problem exists because most approaches rely on lyrical or harmonic similarity, which works well for pop music but not for EDM. EDM structure is instead defined by changes in energy, rhythm, and timbre, with different sections such as buildup, drop, and breakdown. We introduce EDMFormer, a transformer model that combines self-supervised audio embeddings using an EDM-specific dataset and taxonomy. We release this dataset as EDM-98: a group of 98 professionally annotated EDM tracks. EDMFormer improves boundary detection and section labelling compared to existing models, particularly for drops and buildups. The results suggest that combining learned representations with genre-specific data and structural priors is effective for EDM and could be applied to other specialized music genres or broader audio domains.
title EDMFormer: Genre-Specific Self-Supervised Learning for Music Structure Segmentation
topic Sound
Artificial Intelligence
url https://arxiv.org/abs/2603.08759