Using extreme gradient boosting to detect glottal closure instants in speech signal

Date issued

2019

Journal Title

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Volume Title

Publisher

IEEE

Abstract

In this paper, we continue to investigate the use of classifiers for the automatic detection of glottal closure instants (GCIs) from the speech signal. We focus on extreme gradient boosting (XGB), a fast and powerful implementation of a gradient boosting algorithm. We show that XGB outperforms other classifiers, achieving GCI detection accuracy F 1 = 98.55% and AUC = 99.90%. The proposed XGB model is also shown to outperform other existing GCI detection algorithms on publicly available databases. Despite using much less training data, the performance of XGB is comparable to a deep convolutional neural network based approach, especially when it is tested on voices that were not included in the training data.

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Citation

MATOUŠEK, J., TIHELKA, D. Using extreme gradient boosting to detect glottal closure instatnts in speech singal. In: 2019 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP 2019). New York: IEEE, 2019. s. 6515-6519. ISBN 978-1-4799-8131-1 , ISSN 1520-6149.
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