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Multi-Modal Pre-Training for Automated Speech Recognition

2021-10-12 17:07:25
David M. Chan, Shalini Ghosh, Debmalya Chakrabarty, Björn Hoffmeister

Abstract

Traditionally, research in automated speech recognition has focused on local-first encoding of audio representations to predict the spoken phonemes in an utterance. Unfortunately, approaches relying on such hyper-local information tend to be vulnerable to both local-level corruption (such as audio-frame drops, or loud noises) and global-level noise (such as environmental noise, or background noise) that has not been seen during training. In this work, we introduce a novel approach which leverages a self-supervised learning technique based on masked language modeling to compute a global, multi-modal encoding of the environment in which the utterance occurs. We then use a new deep-fusion framework to integrate this global context into a traditional ASR method, and demonstrate that the resulting method can outperform baseline methods by up to 7% on Librispeech; gains on internal datasets range from 6% (on larger models) to 45% (on smaller models).

Abstract (translated)

URL

https://arxiv.org/abs/2110.09890

PDF

https://arxiv.org/pdf/2110.09890.pdf


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