Self-labeling sounds using optimal transport
Self-labeling is a method to simultaneously learn representations and classes using unlabeled data. The naive approach to self-labeling leads to a degenerate solution, and the model-generated labels require regularization to serve as useful training targets. In this work, we adapt a self-labeling me...
| Autores: | , , |
|---|---|
| Tipo de recurso: | artículo |
| Estado: | Versión publicada |
| Fecha de publicación: | 2026 |
| País: | España |
| Institución: | Universitat Pompeu Fabra |
| Repositorio: | Repositorio Digital de la UPF |
| OAI Identifier: | oai:dnet:rdupf_______::a9a6e02ac28cf131e9e76449fd9ae1a5 |
| Acceso en línea: | https://hdl.handle.net/10230/73307 http://dx.doi.org/10.1109/OJSP.2026.3659053 |
| Access Level: | acceso abierto |
| Palabra clave: | Audio signal processing Feature extraction Self-supervised learning |
| Sumario: | Self-labeling is a method to simultaneously learn representations and classes using unlabeled data. The naive approach to self-labeling leads to a degenerate solution, and the model-generated labels require regularization to serve as useful training targets. In this work, we adapt a self-labeling method using optimal transport to the audio domain using the FSD50K dataset. We analyze the structure of the learned representations and compare the emergent classes with the reference annotations. We compare the learned representations with the ones produced using Bootstrap Your Own Latent for Audio (BYOL-A) across several downstream tasks. Our findings indicate that the method learns to group perceptually similar sounds without supervision. The results show that the method is a viable approach for audio representation learning, and that the learned embeddings are as effective for downstream tasks as the ones obtained with the benchmark method. As an additional outcome, the generated classifications give valuable insight into what the model learns, promoting explainability in feature learning. |
|---|