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You Do Not Need More Data: Improving End-To-End Speech Recognition by Text-To-Speech Data Augmentation

Aleksandr Laptev, Roman Korostik, Aleksey Svischev, Andrei Andrusenko, Ivan Medennikov, Sergey Rybin

202034 citationsDOIOpen Access PDF

Abstract

Data augmentation is one of the most effective ways to make end-to-end automatic speech recognition (ASR) perform close to the conventional hybrid approach, especially when dealing with low-resource tasks. Using recent advances in speech synthesis (text-to-speech, or TTS), we build our TTS system on an ASR training database and then extend the data with synthesized speech to train a recognition model. We argue that, when the training data amount is relatively low, this approach can allow an end-to-end model to reach hybrid systems' quality. For an artificial low-to-medium-resource setup, we compare the proposed augmentation with the semi-supervised learning technique. We also investigate the influence of vocoder usage on final ASR performance by comparing Griffin-Lim algorithm with our modified LPCNet. When applied with an external language model, our approach outperforms a semi-supervised setup for LibriSpeech test-clean and only 33% worse than a comparable supervised setup. Our system establishes a competitive result for end-to-end ASR trained on LibriSpeech train-clean-100 set with WER 4.3% for test-clean and 13.5% for test-other.

Topics & Concepts

Computer scienceSpeech recognitionTraining setSet (abstract data type)Artificial intelligenceVoice activity detectionKey (lock)Speech synthesisLanguage modelAcoustic modelTraining (meteorology)Speech processingNatural language processingData setSpeech technologySpeaker recognitionHidden Markov modelAudio miningHybrid systemSpeech Recognition and SynthesisNatural Language Processing TechniquesMusic and Audio Processing