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Magic dust for cross-lingual adaptation of monolingual wav2vec-2.0

2021-10-07 15:29:22
Sameer Khurana, Antoine Laurent, James Glass

Abstract

We propose a simple and effective cross-lingual transfer learning method to adapt monolingual wav2vec-2.0 models for Automatic Speech Recognition (ASR) in resource-scarce languages. We show that a monolingual wav2vec-2.0 is a good few-shot ASR learner in several languages. We improve its performance further via several iterations of Dropout Uncertainty-Driven Self-Training (DUST) by using a moderate-sized unlabeled speech dataset in the target language. A key finding of this work is that the adapted monolingual wav2vec-2.0 achieves similar performance as the topline multilingual XLSR model, which is trained on fifty-three languages, on the target language ASR task.

Abstract (translated)

URL

https://arxiv.org/abs/2110.03560

PDF

https://arxiv.org/pdf/2110.03560.pdf


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