DocumentCode :
86854
Title :
Memory-Enhanced Neural Networks and NMF for Robust ASR
Author :
Geiger, Jurgen T. ; Weninger, Felix ; Gemmeke, Jort F. ; Wollmer, Martin ; Schuller, Bjorn ; Rigoll, Gerhard
Author_Institution :
Inst. for Human-Machine Commun., Tech. Univ. Munchen, Munich, Germany
Volume :
22
Issue :
6
fYear :
2014
fDate :
Jun-14
Firstpage :
1037
Lastpage :
1046
Abstract :
In this article we address the problem of distant speech recognition for reverberant noisy environments. Speech enhancement methods, e. g., using non-negative matrix factorization (NMF), are succesful in improving the robustness of ASR systems. Furthermore, discriminative training and feature transformations are employed to increase the robustness of traditional systems using Gaussian mixture models (GMM). On the other hand, acoustic models based on deep neural networks (DNN) were recently shown to outperform GMMs. In this work, we combine a state-of-the art GMM system with a deep Long Short-Term Memory (LSTM) recurrent neural network in a double-stream architecture. Such networks use memory cells in the hidden units, enabling them to learn long-range temporal context, and thus increasing the robustness against noise and reverberation. The network is trained to predict frame-wise phoneme estimates, which are converted into observation likelihoods to be used as an acoustic model. It is of particular interest whether the LSTM system is capable of improving a robust state-of-the-art GMM system, which is confirmed in the experimental results. In addition, we investigate the efficiency of NMF for speech enhancement on the front-end side. Experiments are conducted on the medium-vocabulary task of the 2nd `CHiME´ Speech Separation and Recognition Challenge, which includes reverberation and highly variable noise. Experimental results show that the average word error rate of the challenge baseline is reduced by 64% relative. The best challenge entry, a noise-robust state-of-the-art recognition system, is outperformed by 25% relative.
Keywords :
Gaussian processes; matrix algebra; recurrent neural nets; speech recognition; CHiME speech separation; DNN; GMM; Gaussian mixture models; LSTM recurrent neural network; NMF; acoustic model; acoustic models; deep neural networks; discriminative training; double stream architecture; feature transformations; hidden units; long short term memory; memory cells; memory enhanced neural networks; nonnegative matrix factorization; phoneme estimation; reverberant noisy environments; robust ASR; speech enhancement methods; speech recognition; Acoustics; Hidden Markov models; Noise; Noise measurement; Speech; Speech enhancement; Training; Long short-term memory; multi-stream recognition; noise robust speech recognition; non-negative matrix factorization;
fLanguage :
English
Journal_Title :
Audio, Speech, and Language Processing, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
2329-9290
Type :
jour
DOI :
10.1109/TASLP.2014.2318514
Filename :
6802435
Link To Document :
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