Error Correction in ASR using Sequence-to-Sequence Models
- URL: http://arxiv.org/abs/2202.01157v1
- Date: Wed, 2 Feb 2022 17:32:59 GMT
- Title: Error Correction in ASR using Sequence-to-Sequence Models
- Authors: Samrat Dutta, Shreyansh Jain, Ayush Maheshwari, Ganesh Ramakrishnan,
Preethi Jyothi
- Abstract summary: Post-editing in Automatic Speech Recognition entails automatically correcting common and systematic errors produced by the ASR system.
We propose to use a powerful pre-trained sequence-to-sequence model, BART, to serve as a denoising model.
Experimental results on accented speech data demonstrate that our strategy effectively rectifies a significant number of ASR errors.
- Score: 32.41875780785648
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Post-editing in Automatic Speech Recognition (ASR) entails automatically
correcting common and systematic errors produced by the ASR system. The outputs
of an ASR system are largely prone to phonetic and spelling errors. In this
paper, we propose to use a powerful pre-trained sequence-to-sequence model,
BART, further adaptively trained to serve as a denoising model, to correct
errors of such types. The adaptive training is performed on an augmented
dataset obtained by synthetically inducing errors as well as by incorporating
actual errors from an existing ASR system. We also propose a simple approach to
rescore the outputs using word level alignments. Experimental results on
accented speech data demonstrate that our strategy effectively rectifies a
significant number of ASR errors and produces improved WER results when
compared against a competitive baseline.
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