Title :
An investigation of deep neural networks for noise robust speech recognition
Author :
Seltzer, Michael L. ; Dong Yu ; Yongqiang Wang
Author_Institution :
Microsoft Res., Redmond, WA, USA
Abstract :
Recently, a new acoustic model based on deep neural networks (DNN) has been introduced. While the DNN has generated significant improvements over GMM-based systems on several tasks, there has been no evaluation of the robustness of such systems to environmental distortion. In this paper, we investigate the noise robustness of DNN-based acoustic models and find that they can match state-of-the-art performance on the Aurora 4 task without any explicit noise compensation. This performance can be further improved by incorporating information about the environment into DNN training using a new method called noise-aware training. When combined with the recently proposed dropout training technique, a 7.5% relative improvement over the previously best published result on this task is achieved using only a single decoding pass and no additional decoding complexity compared to a standard DNN.
Keywords :
neural nets; speech recognition; Aurora 4 task; DNN-based acoustic models; GMM-based systems; decoding complexity; deep neural networks; environmental distortion; noise compensation; noise robust speech recognition; noise-aware training; single decoding pass; Hidden Markov models; Noise; Noise robustness; Speech; Speech recognition; Training; Aurora 4; adaptive training; deep neural network; noise robustness;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2013 IEEE International Conference on
Conference_Location :
Vancouver, BC
DOI :
10.1109/ICASSP.2013.6639100