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Transformer-Based Acoustic Modeling for Hybrid Speech Recognition

Yongqiang Wang, Abdelrahman Mohamed, Dieu Ngan Le, Chunxi Liu, Alex Xiao, Jay Mahadeokar, Hongzhao Huang, Andros Tjandra, Xiaohui Zhang, Frank Zhang, Christian Fuegen, Geoffrey Zweig, Michael L. Seltzer

2020257 citationsDOIOpen Access PDF

Abstract

We propose and evaluate transformer-based acoustic models (AMs) for hybrid speech recognition. Several modeling choices are discussed in this work, including various positional embedding methods and an iterated loss to enable training deep transformers. We also present a preliminary study of using limited right context in transformer models, which makes it possible for streaming applications. We demonstrate that on the widely used Librispeech benchmark, our transformer-based AM outperforms the best published hybrid result by 19% to 26% relative when the standard n-gram language model (LM) is used. Combined with neural network LM for rescoring, our proposed approach achieves state-of-the-art results on Librispeech. Our findings are also confirmed on a much larger internal dataset.

Topics & Concepts

TransformerComputer scienceLanguage modelEmbeddingSpeech recognitionHidden Markov modelArtificial neural networkBenchmark (surveying)Deep neural networksArtificial intelligenceEngineeringGeodesyElectrical engineeringGeographyVoltageSpeech Recognition and SynthesisMusic and Audio ProcessingSpeech and Audio Processing