Title :
Noise Adaptive Training for Robust Automatic Speech Recognition
Author :
Kalinli, Ozlem ; Seltzer, Michael L. ; Droppo, Jasha ; Acero, Alex
Author_Institution :
R&D Group, Sony Comput. Entertainment of America, Foster City, CA, USA
Abstract :
In traditional methods for noise robust automatic speech recognition, the acoustic models are typically trained using clean speech or using multi-condition data that is processed by the same feature enhancement algorithm expected to be used in decoding. In this paper, we propose a noise adaptive training (NAT) algorithm that can be applied to all training data that normalizes the environmental distortion as part of the model training. In contrast to feature enhancement methods, NAT estimates the underlying “pseudo-clean” model parameters directly without relying on point estimates of the clean speech features as an intermediate step. The pseudo-clean model parameters learned with NAT are later used with vector Taylor series (VTS) model adaptation for decoding noisy utterances at test time. Experiments performed on the Aurora 2 and Aurora 3 tasks demonstrate that the proposed NAT method obtain relative improvements of 18.83% and 32.02%, respectively, over VTS model adaptation.
Keywords :
series (mathematics); speech coding; speech enhancement; speech recognition; NAT method; automatic speech recognition; decoding; environmental distortion; feature enhancement; noise adaptive training; pseudoclean model parameters; vector Taylor series model; Acoustic noise; Adaptation model; Automatic speech recognition; Decoding; Network address translation; Noise robustness; Speech enhancement; Speech processing; Training data; Working environment noise; Model adaptation; noise adaptive training; robust speech recognition; vector Taylor series (VTS);
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2010.2040522