MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  Non-linear transformation of the feature space for robust speech recognition (2002) [7 citations — 3 self]

Download:
Download as a PDF
by Ángel De La Torre, José C. Segura, Carmen Benítez, Antonio M. Peinado, Antonio J. Rubio
Proceedings of ICASSP 2002
http://sirio.ugr.es/segura/en/../pdfdocs/icassp02a.pdf
Add To MetaCart

Abstract:

The noise usually produces a non-linear distortion of the feature space considered for Automatic Speech Recognition. This distortion causes a mismatch between the training and recognition conditions which significantly degrades the performance of speech recognizers. In this contribution we analyze the effect of the additive noise over cepstral based representations and we compare several approaches to compensate this effect. We discuss the importance of the non-linearities introduced by the noise and we propose a method (based on the histogram equalization technique) specifically oriented to the compensation of the non-linear transformation caused by the additive noise. The proposed method has been evaluated using the AURORA-2 database and task. The recognition results show significant improvements with respect to other compensation methods reported in the bibliography and reveals the importance of the non-linear effects of the noise and the utility of the proposed method. 1.

Citations

384 Comparison of parametric representations for monosyllabic word recognition in continuously spoken sentences – Davis, Mermelstein - 1980
172 The Image Processing Handbook – Russ - 1995
146 The Aurora Experimental Framework for the Performance Evaluation of Speech Recognition Systems under Noisy Conditions – Hirsch, Pearce - 2000
65 Speech recognition in noisy environments: A survey – Gong - 1995
27 Robustness in Automatic Speech Recognition – Junqua, Haton - 1996
6 Statistical techniques for robust ASR: Review and perspectives – Bellegarda - 1997
6 Compensation for environmental degradation in automatic speech recognition – Stern, Raj, et al. - 1997
6 Improved mean and variance normalization for robust speech recognition – Jain, Hermansky - 2001
2 Compensation of noise effects for robust speech recognition in car environments – Torre, Fohr, et al. - 2000
2 A comparison of signal processing front ends for automatic word recognition – Hoang-Doan, Lippmann - 1995
1 The challenge of spoken language systems: research directions for the nineties – al - 1995
1 Sessions A41 and B11. Noise Robust Recognition: Front-end and Compensation Algorithms – EUROSPEECH - 2001