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Unsupervised Pre-Training of Bidirectional Speech Encoders via Masked Reconstruction

Weiran Wang, Qingming Tang, Karen Livescu

202087 citationsDOI

Abstract

We propose an approach for pre-training speech representations via a masked reconstruction loss. Our pre-trained encoder networks are bidirectional and can therefore be used directly in typical bidirectional speech recognition models. The pre-trained networks can then be fine-tuned on a smaller amount of supervised data for speech recognition. Experiments with this approach on the LibriSpeech and Wall Street Journal corpora show promising results. We find that the main factors that lead to speech recognition improvements are: masking segments of sufficient width in both time and frequency, pre-training on a much larger amount of unlabeled data than the labeled data, and domain adaptation when the unlabeled and labeled data come from different domains. The gain from pre-training is additive to that of supervised data augmentation.

Topics & Concepts

Computer scienceSpeech recognitionDomain adaptationEncoderMasking (illustration)Training setLabeled dataArtificial intelligenceDomain (mathematical analysis)Acoustic modelVoice activity detectionTraining (meteorology)Speech codingAdaptation (eye)Pattern recognition (psychology)Speech processingMathematicsVisual artsMeteorologyClassifier (UML)ArtMathematical analysisOperating systemOpticsPhysicsSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing
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