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Efficient acoustic feature transformation in mismatched environments using a Guided-GAN

2022-10-03 05:33:28
Walter Heymans, Marelie H. Davel, Charl van Heerden

Abstract

We propose a new framework to improve automatic speech recognition (ASR) systems in resource-scarce environments using a generative adversarial network (GAN) operating on acoustic input features. The GAN is used to enhance the features of mismatched data prior to decoding, or can optionally be used to fine-tune the acoustic model. We achieve improvements that are comparable to multi-style training (MTR), but at a lower computational cost. With less than one hour of data, an ASR system trained on good quality data, and evaluated on mismatched audio is improved by between 11.5% and 19.7% relative word error rate (WER). Experiments demonstrate that the framework can be very useful in under-resourced environments where training data and computational resources are limited. The GAN does not require parallel training data, because it utilises a baseline acoustic model to provide an additional loss term that guides the generator to create acoustic features that are better classified by the baseline.

Abstract (translated)

URL

https://arxiv.org/abs/2210.00721

PDF

https://arxiv.org/pdf/2210.00721.pdf


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