Search Results - "Kodrasi, I."
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1
Robust partial multichannel equalization techniques for speech dereverberation
Published in 2012 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) (01-03-2012)“…This paper presents a novel approach for partial multichannel equalization using the multiple-input/output inverse theorem with the first part of one of the…”
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Conference Proceeding -
2
Automatic dysarthric speech detection exploiting pairwise distance-based convolutional neural networks
Published 15-11-2020“…Automatic dysarthric speech detection can provide reliable and cost-effective computer-aided tools to assist the clinical diagnosis and management of…”
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Journal Article -
3
Multi-task single channel speech enhancement using speech presence probability as a secondary task training target
Published 15-11-2020“…To cope with reverberation and noise in single channel acoustic scenarios, typical supervised deep neural network~(DNN)-based techniques learn a mapping from…”
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Journal Article -
4
Automatic and perceptual discrimination between dysarthria, apraxia of speech, and neurotypical speech
Published 15-11-2020“…Automatic techniques in the context of motor speech disorders (MSDs) are typically two-class techniques aiming to discriminate between dysarthria and…”
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Journal Article -
5
The effect of inverse filter length on the robustness of acoustic multichannel equalization
Published in 2012 Proceedings of the 20th European Signal Processing Conference (EUSIPCO) (01-08-2012)“…In acoustic multichannel equalization techniques, generally the length of the inverse filters is chosen such that exact inverse filters can be designed for…”
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Conference Proceeding -
6
Non-intrusive regularization for least-squares multichannel equalization for speech dereverberation
Published in 2012 IEEE 27th Convention of Electrical and Electronics Engineers in Israel (01-11-2012)“…Acoustic multichannel equalization techniques for speech dereverberation are known to be highly sensitive to estimation errors of the room impulse responses…”
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Conference Proceeding