English

Word-level Embeddings for Cross-Task Transfer Learning in Speech Processing

Computation and Language 2021-12-15 v5 Sound Audio and Speech Processing

Abstract

Recent breakthroughs in deep learning often rely on representation learning and knowledge transfer. In recent years, unsupervised and self-supervised techniques for learning speech representation were developed to foster automatic speech recognition. Up to date, most of these approaches are task-specific and designed for within-task transfer learning between different datasets or setups of a particular task. In turn, learning task-independent representation of speech and cross-task applications of transfer learning remain less common. Here, we introduce an encoder capturing word-level representations of speech for cross-task transfer learning. We demonstrate the application of the pre-trained encoder in four distinct speech and audio processing tasks: (i) speech enhancement, (ii) language identification, (iii) speech, noise, and music classification, and (iv) speaker identification. In each task, we compare the performance of our cross-task transfer learning approach to task-specific baselines. Our results show that the speech representation captured by the encoder through the pre-training is transferable across distinct speech processing tasks and datasets. Notably, even simple applications of our pre-trained encoder outperformed task-specific methods, or were comparable, depending on the task.

Keywords

Cite

@article{arxiv.1910.09909,
  title  = {Word-level Embeddings for Cross-Task Transfer Learning in Speech Processing},
  author = {Pierre Beckmann and Mikolaj Kegler and Milos Cernak},
  journal= {arXiv preprint arXiv:1910.09909},
  year   = {2021}
}

Comments

Published at EUSIPCO 2021

R2 v1 2026-06-23T11:51:07.084Z