Litcius/Paper detail

Efficiently Fusing Pretrained Acoustic and Linguistic Encoders for Low-Resource Speech Recognition

Cheng Yi, Shiyu Zhou, Bo Xu

2021IEEE Signal Processing Letters30 citationsDOIOpen Access PDF

Abstract

End-to-end models have achieved impressive results on the task of automatic speech recognition (ASR). For low-resource ASR tasks, however, labeled data can hardly satisfy the demand of end-to-end models. Self-supervised acoustic pre-training has already shown its impressive ASR performance, while the transcription is still inadequate for language modeling in end-to-end models. In this work, we fuse a pre-trained acoustic encoder (wav2vec2.0) and a pre-trained linguistic encoder (BERT) into an end-to-end ASR model. The fused model only needs to learn the transfer from speech to language during fine-tuning on limited labeled data. The length of the two modalities is matched by a monotonic attention mechanism without additional parameters. Besides, a fully connected layer is introduced for the hidden mapping between modalities. We further propose a scheduled fine-tuning strategy to preserve and utilize the text context modeling ability of the pre-trained linguistic encoder. Experiments show our effective utilizing of pre-trained modules. Our model achieves better recognition performance on CALLHOME corpus (15 hours) than other end-to-end models.

Topics & Concepts

Computer scienceSpeech recognitionEncoderAcoustic modelLanguage modelArtificial intelligenceTask (project management)Transcription (linguistics)Context (archaeology)Fuse (electrical)Natural language processingContext modelRule-based machine translationSpeech processingSpeaker recognitionVoice activity detectionTask analysisLabeled dataLayer (electronics)Speech codingPattern recognition (psychology)Data modelingNatural languageDecoding methodsTraining setTransfer of learningModality (human–computer interaction)Speech corpusModalitiesAssociation (psychology)Speech Recognition and SynthesisSpeech and Audio ProcessingNatural Language Processing Techniques