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BYOL-S: Learning Self-supervised Speech Representations by Bootstrapping

Sound 2022-10-26 v4 Artificial Intelligence Machine Learning Audio and Speech Processing

Abstract

Methods for extracting audio and speech features have been studied since pioneering work on spectrum analysis decades ago. Recent efforts are guided by the ambition to develop general-purpose audio representations. For example, deep neural networks can extract optimal embeddings if they are trained on large audio datasets. This work extends existing methods based on self-supervised learning by bootstrapping, proposes various encoder architectures, and explores the effects of using different pre-training datasets. Lastly, we present a novel training framework to come up with a hybrid audio representation, which combines handcrafted and data-driven learned audio features. All the proposed representations were evaluated within the HEAR NeurIPS 2021 challenge for auditory scene classification and timestamp detection tasks. Our results indicate that the hybrid model with a convolutional transformer as the encoder yields superior performance in most HEAR challenge tasks.

Keywords

Cite

@article{arxiv.2206.12038,
  title  = {BYOL-S: Learning Self-supervised Speech Representations by Bootstrapping},
  author = {Gasser Elbanna and Neil Scheidwasser-Clow and Mikolaj Kegler and Pierre Beckmann and Karl El Hajal and Milos Cernak},
  journal= {arXiv preprint arXiv:2206.12038},
  year   = {2022}
}

Comments

Submitted to HEAR-PMLR 2021

R2 v1 2026-06-24T12:02:35.348Z