English

Censer: Curriculum Semi-supervised Learning for Speech Recognition Based on Self-supervised Pre-training

Sound 2022-06-28 v2 Audio and Speech Processing

Abstract

Recent studies have shown that the benefits provided by self-supervised pre-training and self-training (pseudo-labeling) are complementary. Semi-supervised fine-tuning strategies under the pre-training framework, however, remain insufficiently studied. Besides, modern semi-supervised speech recognition algorithms either treat unlabeled data indiscriminately or filter out noisy samples with a confidence threshold. The dissimilarities among different unlabeled data are often ignored. In this paper, we propose Censer, a semi-supervised speech recognition algorithm based on self-supervised pre-training to maximize the utilization of unlabeled data. The pre-training stage of Censer adopts wav2vec2.0 and the fine-tuning stage employs an improved semi-supervised learning algorithm from slimIPL, which leverages unlabeled data progressively according to their pseudo labels' qualities. We also incorporate a temporal pseudo label pool and an exponential moving average to control the pseudo labels' update frequency and to avoid model divergence. Experimental results on Libri-Light and LibriSpeech datasets manifest our proposed method achieves better performance compared to existing approaches while being more unified.

Keywords

Cite

@article{arxiv.2206.08189,
  title  = {Censer: Curriculum Semi-supervised Learning for Speech Recognition Based on Self-supervised Pre-training},
  author = {Bowen Zhang and Songjun Cao and Xiaoming Zhang and Yike Zhang and Long Ma and Takahiro Shinozaki},
  journal= {arXiv preprint arXiv:2206.08189},
  year   = {2022}
}
R2 v1 2026-06-24T11:53:53.324Z