We propose a new model adaptation method based on the histogram equalization technique for providing robustness in noisy environments. The trained acoustic mean models of a speech recognizer are adapted into environmentally matched conditions by using the histogram equalization algorithm on a single utterance basis. For more robust speech recognition in the heavily noisy conditions, trained acoustic covariance models are efficiently adapted by the signal-to-noise ratio-dependent linear interpolation between trained covariance models and utterance-level sample covariance models. Speech recognition experiments on both the digit-based Aurora2 task and the large vocabulary-based task showed that the proposed model adaptation approach provides ...
In this paper, experiments were performed to evaluate the principal performance boundaries of adapte...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
Speech recognizers often experience serious performance degradation when d ployed in an unknown acou...
We propose a new model adaptation method based on the histogram equalization technique for providing...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Mismatch between training and test conditions deteriorates the performance of speech recognizers. Th...
This paper describes an approach to increase the noise robust-ness of automatic speech recognition s...
Noise robustness is one of the primary challenges facing most automatic speech recognition (ASR) sys...
Automatic speech recognition (ASR) is a fascinating field of science where the machine almost become...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
The performance of current automatic speech recognition (ASR) systems radically deteriorates when th...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, experiments were performed to evaluate the principal performance boundaries of adapte...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
Speech recognizers often experience serious performance degradation when d ployed in an unknown acou...
We propose a new model adaptation method based on the histogram equalization technique for providing...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
Mismatch between training and test conditions deteriorates the performance of speech recognizers. Th...
This paper describes an approach to increase the noise robust-ness of automatic speech recognition s...
Noise robustness is one of the primary challenges facing most automatic speech recognition (ASR) sys...
Automatic speech recognition (ASR) is a fascinating field of science where the machine almost become...
Colloque avec actes et comité de lecture. internationale.International audienceNoise degrades the pe...
The performance of current automatic speech recognition (ASR) systems radically deteriorates when th...
Article dans revue scientifique avec comité de lecture. internationale.International audienceThe rob...
Feature statistics normalization in the cepstral domain is one of the most performing approaches for...
This thesis examines techniques to improve the robustness of automatic speech recognition (ASR) syst...
In traditional methods for noise robust automatic speech recogni-tion, the acoustic models are typic...
In this paper, experiments were performed to evaluate the principal performance boundaries of adapte...
Automatic speech recognition systems have difficulties with adapting to different speakers and acous...
Speech recognizers often experience serious performance degradation when d ployed in an unknown acou...