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Global Normalization for Streaming Speech Recognition in a Modular Framework (2205.13674v1)
Published 26 May 2022 in cs.LG, cs.AI, and cs.CL
Abstract: We introduce the Globally Normalized Autoregressive Transducer (GNAT) for addressing the label bias problem in streaming speech recognition. Our solution admits a tractable exact computation of the denominator for the sequence-level normalization. Through theoretical and empirical results, we demonstrate that by switching to a globally normalized model, the word error rate gap between streaming and non-streaming speech-recognition models can be greatly reduced (by more than 50\% on the Librispeech dataset). This model is developed in a modular framework which encompasses all the common neural speech recognition models. The modularity of this framework enables controlled comparison of modelling choices and creation of new models.
- Ehsan Variani (13 papers)
- Ke Wu (85 papers)
- Michael Riley (16 papers)
- David Rybach (19 papers)
- Matt Shannon (10 papers)
- Cyril Allauzen (13 papers)