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Investigation of Speaker-adaptation methods in Transformer based ASR

2020-08-07 16:09:03
Vishwas M. Shetty, Metilda Sagaya Mary N J, S. Umesh

Abstract

End-to-end models are fast replacing conventional hybrid models in automatic speech recognition. A transformer is a sequence-to-sequence framework solely based on attention, that was initially applied to machine translation task. This end-to-end framework has been shown to give promising results when used for automatic speech recognition as well. In this paper, we explore different ways of incorporating speaker information while training a transformer-based model to improve its performance. We present speaker information in the form of speaker embeddings for each of the speakers. Two broad categories of speaker embeddings are used: (i)fixed embeddings, and (ii)learned embeddings. We experiment using speaker embeddings learned along with the model training, as well as one-hot vectors and x-vectors. Using these different speaker embeddings, we obtain an average relative improvement of 1% to 3% in the token error rate. We report results on the NPTEL lecture database. NPTEL is an open-source e-learning portal providing content from top Indian universities.

Abstract (translated)

URL

https://arxiv.org/abs/2008.03247

PDF

https://arxiv.org/pdf/2008.03247.pdf


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