English

Two-Pass End-to-End ASR Model Compression

Audio and Speech Processing 2022-01-11 v1 Sound

Abstract

Speech recognition on smart devices is challenging owing to the small memory footprint. Hence small size ASR models are desirable. With the use of popular transducer-based models, it has become possible to practically deploy streaming speech recognition models on small devices [1]. Recently, the two-pass model [2] combining RNN-T and LAS modules has shown exceptional performance for streaming on-device speech recognition. In this work, we propose a simple and effective approach to reduce the size of the two-pass model for memory-constrained devices. We employ a popular knowledge distillation approach in three stages using the Teacher-Student training technique. In the first stage, we use a trained RNN-T model as a teacher model and perform knowledge distillation to train the student RNN-T model. The second stage uses the shared encoder and trains a LAS rescorer for student model using the trained RNN-T+LAS teacher model. Finally, we perform deep-finetuning for the student model with a shared RNN-T encoder, RNN-T decoder, and LAS rescorer. Our experimental results on standard LibriSpeech dataset show that our system can achieve a high compression rate of 55% without significant degradation in the WER compared to the two-pass teacher model.

Keywords

Cite

@article{arxiv.2201.02741,
  title  = {Two-Pass End-to-End ASR Model Compression},
  author = {Nauman Dawalatabad and Tushar Vatsal and Ashutosh Gupta and Sungsoo Kim and Shatrughan Singh and Dhananjaya Gowda and Chanwoo Kim},
  journal= {arXiv preprint arXiv:2201.02741},
  year   = {2022}
}

Comments

IEEE ASRU 2021

R2 v1 2026-06-24T08:43:27.924Z