MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  A practical perceptual frequency autoregressive HMM enhancement system (1998) [1 citations — 0 self]

Download:
Download as a PDF | Download as a PS
by Beth Logan, Tony Robinson
In Proc. ICSLP
http://svr-www.eng.cam.ac.uk/reports/svr-ftp/logan_icslp98.ps.gz
Add To MetaCart

Abstract:

We have previously developed a speech enhancement scheme which can adapt to unknown additive noise. We model speech and noise using perceptual frequency or `warped ' autoregressive HMMs (AR-HMMs) and estimate the clean speech and noise parameters within this framework. In this current work, we investigate the use of our system as a front end to a MFCC recognition system trained on clean speech. To use our system as a front end, we make two modifications. First, we use minimum mean squared error (MMSE) spectral rather than time domain estimators for enhancement. Second, for computational reasons, we form estimators from non-warped AR-HMMs. To avoid mismatch introduced when converting between warped and nonwarped models, we use parallel sets of models. Results are presented for small and medium vocabulary tasks. On the simple task, we are able to approach the performance of a matched system when language model information is included. On the second task, we are not able to incorporate a language model due to modelling deficiencies in AR-HMMs. However, we still demonstrate substantial improvements over baseline results.

Citations

73 The DARPA 1000-Word Resource Management Database for Continuous Speech Recognition – Price, Fisher, et al. - 1988
53 The NOISEX-92 study on the effect of additive noise on automatic speech recogonition – Varga, Steeneken, et al. - 1992
31 HTK: Hidden Markov Model Toolkit V1.5. Cambridge Univ – Young - 1993
27 Linear Prediction on a Warped Frequency Scale – Strube - 1980
22 Bayesian estimation approach for speech enhancement using hidden Markov models – Ephraim, “A - 1992
13 A speech enhancement method based on Kalman filtering – Paliwal - 1986
11 Iterative and sequential Kalman filter-based speech enhancement algorithms – Gannot, Burshtein, et al. - 1998
7 Enhancement and recognition of noisy speech within an autoregressive hidden Markov model framework using noise estimates from the noisy signal – Logan, Robinson - 1997
3 Improving autoregressive hidden Markov model recognition accuracy using a nonlinear frequency scale with application to speech enhancement – Logan, Robinson - 1997
3 Model-Based Speech Enhancement – Seymour - 1996