© 2015 EURASIP. In this paper, we propose a single-channel speech enhancement system based on the noise robust exemplar matching (N-REM) framework using coupled dictionaries. N-REM approximates noisy speech segments as a sparse linear combination of speech and noise exemplars that are stored in multiple dictionaries based on their length and associated speech unit. The dictionaries providing the best approximation of the noisy mixtures are used to estimate the speech component. We further employ a coupled dictionary approach that performs the approximation in the lower dimensional mel domain to benefit from the reduced computational load and better generalization, and the enhancement in the short-time Fourier transform (STFT) domain for hig...
© 2014 IEEE. Performing automatic speech recognition using exemplars (templates) holds the promise t...
This paper describes and analyzes several exemplar selection techniques to reduce the number of exem...
Yilmaz E., Gemmeke J.F., Van hamme H., ''Noise-robust automatic speech recognition with exemplar-bas...
Yılmaz E., Baby D., Van hamme H., ''Noise robust exemplar matching with coupled dictionaries for sin...
10.1109/EUSIPCO.2015.73625082015 23rd European Signal Processing Conference, EUSIPCO 2015874-87
© 2015 EURASIP. This paper investigates an adaptive noise dictionary design approach to achieve an e...
This thesis introduces a novel noise robust automatic speech recognition scheme by introducing noise...
Yilmaz E., ''Noise robust exemplar matching for speech recognition and enhancement'', Proefschrift v...
In exemplar-based speech enhancement systems, lower dimensional features are preferred over the full...
Copyright © 2015 ISCA. We present a novel automatic speech recognition (ASR) scheme which uses the r...
In exemplar-based speech enhancement systems, lower dimen-sional features are preferred over the ful...
Yilmaz E., Gemmeke J.F., Van hamme H., ''Data selection for noise robust exemplar matching'', 41st I...
© 2015 Elsevier B.V. All rights reserved. The noise robust exemplar matching (N-REM) framework perfo...
A feature enhancement technique for noise-robust speech recogni-tion is proposed. Existing sparse ex...
© 2016 IEEE. Exemplar-based acoustic modeling is based on labeled training segments that are compare...
© 2014 IEEE. Performing automatic speech recognition using exemplars (templates) holds the promise t...
This paper describes and analyzes several exemplar selection techniques to reduce the number of exem...
Yilmaz E., Gemmeke J.F., Van hamme H., ''Noise-robust automatic speech recognition with exemplar-bas...
Yılmaz E., Baby D., Van hamme H., ''Noise robust exemplar matching with coupled dictionaries for sin...
10.1109/EUSIPCO.2015.73625082015 23rd European Signal Processing Conference, EUSIPCO 2015874-87
© 2015 EURASIP. This paper investigates an adaptive noise dictionary design approach to achieve an e...
This thesis introduces a novel noise robust automatic speech recognition scheme by introducing noise...
Yilmaz E., ''Noise robust exemplar matching for speech recognition and enhancement'', Proefschrift v...
In exemplar-based speech enhancement systems, lower dimensional features are preferred over the full...
Copyright © 2015 ISCA. We present a novel automatic speech recognition (ASR) scheme which uses the r...
In exemplar-based speech enhancement systems, lower dimen-sional features are preferred over the ful...
Yilmaz E., Gemmeke J.F., Van hamme H., ''Data selection for noise robust exemplar matching'', 41st I...
© 2015 Elsevier B.V. All rights reserved. The noise robust exemplar matching (N-REM) framework perfo...
A feature enhancement technique for noise-robust speech recogni-tion is proposed. Existing sparse ex...
© 2016 IEEE. Exemplar-based acoustic modeling is based on labeled training segments that are compare...
© 2014 IEEE. Performing automatic speech recognition using exemplars (templates) holds the promise t...
This paper describes and analyzes several exemplar selection techniques to reduce the number of exem...
Yilmaz E., Gemmeke J.F., Van hamme H., ''Noise-robust automatic speech recognition with exemplar-bas...