Title
PCMM-based feature compensation schemes using model interpolation and mixture sharing
Abstract
In this paper, we propose an effective feature compensation scheme based on the speech model in order to achieve robust speech recognition. The proposed feature compensation method is based on parallel combined mixture model (PCMM). The previous PCMM works require a highly sophisticated procedure for estimation of the combined mixture model in order to reflect the time-varying noisy conditions at every utterance. The proposed schemes can cope with the time-varying background noise by employing the interpolation method of the multiple mixture models. We apply the 'data-driven' method to PCMM for more reliable model combination and introduce a frame-synched version for estimation of environments a posteriori. In order to reduce the computational complexity due to multiple models, we propose a technique for mixture sharing. The statistically similar Gaussian components are selected and the smoothed versions are generated for sharing. The performance was examined over Aurora 2.0 and speech corpus recorded while car-driving. The experimental results indicate that the proposed schemes are effective in realizing robust speech recognition and reducing the computational complexities under both simulated environments and real-life conditions.
Year
DOI
Venue
2004
10.1109/ICASSP.2004.1326154
ICASSP (1)
Keywords
Field
DocType
frame-synched version,speech model,time-varying background noise,speech recognition,aurora 2.0,computational complexity reduction,model interpolation,interpolation,smoothing methods,parameter estimation,data-driven method,estimation,gaussian distribution,parallel combined mixture model,smoothed versions,car-driving,feature extraction,statistically similar gaussian components,mixture sharing,robust speech recognition,pcmm-based feature compensation,performance,mixture model,computational complexity,degradation,background noise
Speech corpus,Background noise,Pattern recognition,Computer science,Interpolation,A priori and a posteriori,Feature extraction,Artificial intelligence,Estimation theory,Mixture model,Computational complexity theory
Conference
Volume
ISSN
ISBN
1
1520-6149
0-7803-8484-9
Citations 
PageRank 
References 
1
0.37
3
Authors
3
Name
Order
Citations
PageRank
Wooil Kim112016.95
Ohil Kwon210.71
Hanseok Ko342180.24