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REDAT: Accent-Invariant Representation for End-To-End ASR by Domain Adversarial Training with Relabeling

Hu Hu, Xuesong Yang, Zeynab Raeesy, Jinxi Guo, Gokce Keskin, Harish Arsikere, Ariya Rastrow, Andreas Stolcke, Roland Maas

202128 citationsDOI

Abstract

Accents mismatching is a critical problem for end-to-end ASR. This paper aims to address this problem by building an accent-robust RNN-T system with domain adversarial training (DAT). We unveil the magic behind DAT and provide, for the first time, a theoretical guarantee that DAT learns accent-invariant representations. We also prove that performing the gradient reversal in DAT is equivalent to minimizing the Jensen-Shannon divergence between domain output distributions. Motivated by the proof of equivalence, we introduce reDAT, a novel technique based on DAT, which relabels data using either unsupervised clustering or soft labels. Experiments on 23K hours of multi-accent data show that DAT achieves competitive results over accent-specific baselines on both native and non-native English accents but up to 13% relative WER reduction on unseen accents; our reDAT yields further improvements over DAT by 3% and 8% relatively on non-native accents of American and British English.

Topics & Concepts

Computer scienceStress (linguistics)Speech recognitionInvariant (physics)Artificial intelligenceDeep neural networksNatural language processingArtificial neural networkMathematicsMathematical physicsSpeech Recognition and SynthesisSpeech and Audio ProcessingPhonetics and Phonology Research
REDAT: Accent-Invariant Representation for End-To-End ASR by Domain Adversarial Training with Relabeling | Litcius