@inproceedings{0c4a6298a7f845238ba0e14f3fb585e2,
title = "A REPETITION-BASED TRIPLET MINING APPROACH FOR MUSIC SEGMENTATION",
abstract = "Contrastive learning has recently appeared as a well-suited method to find representations of music audio signals that are suitable for structural segmentation. However, most existing unsupervised training strategies omit the notion of repetition and therefore fail at encompassing this essential aspect of music structure. This work introduces a triplet mining method which explicitly considers repeating sequences occurring inside a music track by leveraging common audio descriptors. We study its impact on the learned representations through downstream music segmentation. Because musical repetitions can be of different natures, we give further insight on the role of the audio descriptors employed at the triplet mining stage as well as the trade-off existing between the quality of the triplets mined and the quantity of unlabelled data used for training. We observe that our method requires less non-annotated data while remaining competitive against other unsupervised methods trained on a larger corpus.",
author = "Morgan Buisson and Brian McFee and Slim Essid and Crayencour, \{H{\'e}l{\`e}ne C.\}",
note = "Publisher Copyright: {\textcopyright} M. Buisson, B. McFee, S. Essid and H. C. Crayencour.; 24th International Society for Music Information Retrieval Conference, ISMIR 2023 ; Conference date: 05-11-2023 Through 09-11-2023",
year = "2023",
month = jan,
day = "1",
language = "English",
series = "24th International Society for Music Information Retrieval Conference, ISMIR 2023 - Proceedings",
publisher = "International Society for Music Information Retrieval",
pages = "417--424",
editor = "Augusto Sarti and Fabio Antonacci and Mark Sandler and Paolo Bestagini and Simon Dixon and Beici Liang and Gael Richard and Johan Pauwels",
booktitle = "24th International Society for Music Information Retrieval Conference, ISMIR 2023 - Proceedings",
}