Title
A Streaming On-Device End-to-End Model Surpassing Server-Side Conventional Model Quality and Latency
Abstract
Thus far, end-to-end (E2E) models have not been shown to outperform state-of-the-art conventional models with respect to both quality, i.e., word error rate (WER), and latency, i.e., the time the hypothesis is finalized after the user stops speaking. In this paper, we develop a first-pass Recurrent Neural Network Transducer (RNN-T) model and a second-pass Listen, Attend, Spell (LAS) rescorer that surpasses a conventional model in both quality and latency. On the quality side, we incorporate a large number of utterances across varied domains to increase acoustic diversity and the vocabulary seen by the model. We also train with accented English speech to make the model more robust to different pronunciations. In addition, given the increased amount of training data, we explore a varied learning rate schedule. On the latency front, we explore using the end-of-sentence decision emitted by the RNN-T model to close the microphone, and also introduce various optimizations to improve the speed of LAS rescoring. Overall, we find that RNN-T+LAS offers a better WER and latency tradeoff compared to a conventional model. For example, for the same latency, RNN-T+LAS obtains a 8% relative improvement in WER, while being more than 400-times smaller in model size.
Year
DOI
Venue
2020
10.1109/ICASSP40776.2020.9054188
ICASSP
DocType
Citations 
PageRank 
Conference
4
0.41
References 
Authors
0
29
Name
Order
Citations
PageRank
Tara N. Sainath13497232.43
Yanzhang He26416.36
Bo Li320642.46
Arun Narayanan442532.99
Ruoming Pang5109292.99
Antoine Bruguier663.50
Shuo-Yiin Chang7274.71
W. Li8196.15
Raziel Álvarez9303.84
Zhifeng Chen102747106.75
Chung-Cheng Chiu1124828.00
Garcia David1240.41
Gruenstein Alex1340.41
Hu Ke1440.41
Jin Minho1540.41
Anjuli Kannan16907.17
Qiao Liang177719.86
Ian McGraw1825324.41
Cal Peyser1950.77
Rohit Prabhavalkar2016322.56
Pundak Golan2140.41
Rybach David2240.41
Shangguan Yuan2340.74
Sheth Yash2440.41
Strohman Trevor2540.41
Visontai Mirko2640.41
Yonghui Wu27106572.78
Yu Zhang2844241.79
Zhao Ding2940.41