Literature DB >> 26973851

Improving Robustness of Deep Neural Network Acoustic Models via Speech Separation and Joint Adaptive Training.

Arun Narayanan1, DeLiang Wang2.   

Abstract

Although deep neural network (DNN) acoustic models are known to be inherently noise robust, especially with matched training and testing data, the use of speech separation as a frontend and for deriving alternative feature representations has been shown to improve performance in challenging environments. We first present a supervised speech separation system that significantly improves automatic speech recognition (ASR) performance in realistic noise conditions. The system performs separation via ratio time-frequency masking; the ideal ratio mask (IRM) is estimated using DNNs. We then propose a framework that unifies separation and acoustic modeling via joint adaptive training. Since the modules for acoustic modeling and speech separation are implemented using DNNs, unification is done by introducing additional hidden layers with fixed weights and appropriate network architecture. On the CHiME-2 medium-large vocabulary ASR task, and with log mel spectral features as input to the acoustic model, an independently trained ratio masking frontend improves word error rates by 10.9% (relative) compared to the noisy baseline. In comparison, the jointly trained system improves performance by 14.4%. We also experiment with alternative feature representations to augment the standard log mel features, like the noise and speech estimates obtained from the separation module, and the standard feature set used for IRM estimation. Our best system obtains a word error rate of 15.4% (absolute), an improvement of 4.6 percentage points over the next best result on this corpus.

Entities:  

Keywords:  CHiME-2; joint training; ratio masking; robust ASR; time-frequency masking.

Year:  2015        PMID: 26973851      PMCID: PMC4784988          DOI: 10.1109/TASLP.2014.2372314

Source DB:  PubMed          Journal:  IEEE/ACM Trans Audio Speech Lang Process


  4 in total

1.  Role of mask pattern in intelligibility of ideal binary-masked noisy speech.

Authors:  Ulrik Kjems; Jesper B Boldt; Michael S Pedersen; Thomas Lunner; Deliang Wang
Journal:  J Acoust Soc Am       Date:  2009-09       Impact factor: 1.840

2.  The role of binary mask patterns in automatic speech recognition in background noise.

Authors:  Arun Narayanan; DeLiang Wang
Journal:  J Acoust Soc Am       Date:  2013-05       Impact factor: 1.840

3.  Speech enhancement based on physiological and psychoacoustical models of modulation perception and binaural interaction.

Authors:  B Kollmeier; R Koch
Journal:  J Acoust Soc Am       Date:  1994-03       Impact factor: 1.840

4.  On Training Targets for Supervised Speech Separation.

Authors:  Yuxuan Wang; Arun Narayanan; DeLiang Wang
Journal:  IEEE/ACM Trans Audio Speech Lang Process       Date:  2014-12
  4 in total

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