학술논문

Align-Refine: Non-Autoregressive Speech Recognition via Iterative Realignment
Document Type
Working Paper
Source
Subject
Electrical Engineering and Systems Science - Audio and Speech Processing
Computer Science - Computation and Language
Computer Science - Machine Learning
Computer Science - Sound
I.2.7
Language
Abstract
Non-autoregressive models greatly improve decoding speed over typical sequence-to-sequence models, but suffer from degraded performance. Infilling and iterative refinement models make up some of this gap by editing the outputs of a non-autoregressive model, but are constrained in the edits that they can make. We propose iterative realignment, where refinements occur over latent alignments rather than output sequence space. We demonstrate this in speech recognition with Align-Refine, an end-to-end Transformer-based model which refines connectionist temporal classification (CTC) alignments to allow length-changing insertions and deletions. Align-Refine outperforms Imputer and Mask-CTC, matching an autoregressive baseline on WSJ at 1/14th the real-time factor and attaining a LibriSpeech test-other WER of 9.0% without an LM. Our model is strong even in one iteration with a shallower decoder.