English

Self-supervised speech representation learning for keyword-spotting with light-weight transformers

Sound 2023-03-09 v1 Machine Learning Audio and Speech Processing

Abstract

Self-supervised speech representation learning (S3RL) is revolutionizing the way we leverage the ever-growing availability of data. While S3RL related studies typically use large models, we employ light-weight networks to comply with tight memory of compute-constrained devices. We demonstrate the effectiveness of S3RL on a keyword-spotting (KS) problem by using transformers with 330k parameters and propose a mechanism to enhance utterance-wise distinction, which proves crucial for improving performance on classification tasks. On the Google speech commands v2 dataset, the proposed method applied to the Auto-Regressive Predictive Coding S3RL led to a 1.2% accuracy improvement compared to training from scratch. On an in-house KS dataset with four different keywords, it provided 6% to 23.7% relative false accept improvement at fixed false reject rate. We argue this demonstrates the applicability of S3RL approaches to light-weight models for KS and confirms S3RL is a powerful alternative to traditional supervised learning for resource-constrained applications.

Keywords

Cite

@article{arxiv.2303.04255,
  title  = {Self-supervised speech representation learning for keyword-spotting with light-weight transformers},
  author = {Chenyang Gao and Yue Gu and Francesco Caliva and Yuzong Liu},
  journal= {arXiv preprint arXiv:2303.04255},
  year   = {2023}
}
R2 v1 2026-06-28T09:06:32.241Z