Metric Learning for User-defined Keyword Spotting
Abstract
The goal of this work is to detect new spoken terms defined by users. While most previous works address Keyword Spotting (KWS) as a closed-set classification problem, this limits their transferability to unseen terms. The ability to define custom keywords has advantages in terms of user experience. In this paper, we propose a metric learning-based training strategy for user-defined keyword spotting. In particular, we make the following contributions: (1) we construct a large-scale keyword dataset with an existing speech corpus and propose a filtering method to remove data that degrade model training; (2) we propose a metric learning-based two-stage training strategy, and demonstrate that the proposed method improves the performance on the user-defined keyword spotting task by enriching their representations; (3) to facilitate the fair comparison in the user-defined KWS field, we propose unified evaluation protocol and metrics. Our proposed system does not require an incremental training on the user-defined keywords, and outperforms previous works by a significant margin on the Google Speech Commands dataset using the proposed as well as the existing metrics.
Keywords
Cite
@article{arxiv.2211.00439,
title = {Metric Learning for User-defined Keyword Spotting},
author = {Jaemin Jung and Youkyum Kim and Jihwan Park and Youshin Lim and Byeong-Yeol Kim and Youngjoon Jang and Joon Son Chung},
journal= {arXiv preprint arXiv:2211.00439},
year = {2022}
}