Progressive Unsupervised Domain Adaptation for ASR Using Ensemble Models and Multi-Stage Training
Rehan Ahmad,
Muhammad Umar Farooq,
Thomas Hain
Abstract:In Automatic Speech Recognition (ASR), teacher-student (T/S) training has shown to perform well for domain adaptation with small amount of training data. However, adaption without groundtruth labels is still challenging. A previous study has shown the effectiveness of using ensemble teacher models in T/S training for unsupervised domain adaptation (UDA) but its performance still lags behind compared to the model trained on in-domain data. This paper proposes a method to yield better UDA by training multistage … Show more
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