Unsupervised Data Selection via Discrete Speech Representation for ASR
Abstract
Self-supervised learning of speech representations has achieved impressive results in improving automatic speech recognition (ASR). In this paper, we show that data selection is important for self-supervised learning. We propose a simple and effective unsupervised data selection method which selects acoustically similar speech to a target domain. It takes the discrete speech representation available in common self-supervised learning frameworks as input, and applies a contrastive data selection method on the discrete tokens. Through extensive empirical studies we show that our proposed method reduces the amount of required pre-training data and improves the downstream ASR performance. Pre-training on a selected subset of 6% of the general data pool results in 11.8% relative improvements in LibriSpeech test-other compared to pre-training on the full set. On Multilingual LibriSpeech French, German, and Spanish test sets, selecting 6% data for pre-training reduces word error rate by more than 15% relatively compared to the full set, and achieves competitive results compared to current state-of-the-art performances.
Keywords
Cite
@article{arxiv.2204.01981,
title = {Unsupervised Data Selection via Discrete Speech Representation for ASR},
author = {Zhiyun Lu and Yongqiang Wang and Yu Zhang and Wei Han and Zhehuai Chen and Parisa Haghani},
journal= {arXiv preprint arXiv:2204.01981},
year = {2022}
}
Comments
Submitted to Interspeech 2022