Multi-Source Contrastive Learning from Musical Audio
Abstract
Contrastive learning constitutes an emerging branch of self-supervised learning that leverages large amounts of unlabeled data, by learning a latent space, where pairs of different views of the same sample are associated. In this paper, we propose musical source association as a pair generation strategy in the context of contrastive music representation learning. To this end, we modify COLA, a widely used contrastive learning audio framework, to learn to associate a song excerpt with a stochastically selected and automatically extracted vocal or instrumental source. We further introduce a novel modification to the contrastive loss to incorporate information about the existence or absence of specific sources. Our experimental evaluation in three different downstream tasks (music auto-tagging, instrument classification and music genre classification) using the publicly available Magna-Tag-A-Tune (MTAT) as a source dataset yields competitive results to existing literature methods, as well as faster network convergence. The results also show that this pre-training method can be steered towards specific features, according to the selected musical source, while also being dependent on the quality of the separated sources.
Keywords
Cite
@article{arxiv.2302.07077,
title = {Multi-Source Contrastive Learning from Musical Audio},
author = {Christos Garoufis and Athanasia Zlatintsi and Petros Maragos},
journal= {arXiv preprint arXiv:2302.07077},
year = {2023}
}
Comments
8 pages, 4 figures, 3 tables. Camera-ready submission at SMC23