
Slide

Centre Interdisciplinaire
de Recherche et d’Innovation
en Cybersécurité et Société
de Recherche et d’Innovation
en Cybersécurité et Société
1.
Boulmerka, A.; Allili, M. S.
Thresholding-based segmentation revisited using mixtures of generalized Gaussian distributions Article d'actes
Dans: Proceedings - International Conference on Pattern Recognition, p. 2894–2897, Tsukuba, 2012, ISBN: 978-4-9906441-0-9, (ISSN: 10514651).
Résumé | Liens | BibTeX | Étiquettes: Arbitrary number, Gaussian noise (electronic), Generalized Gaussian Distributions, Heavy-tailed, Image segmentation, Kittler, Minimum error thresholding, Multi-modal, New approaches, Non-Gaussian, Otsu's method, Pattern Recognition, State-of-the-art techniques, Synthetic data
@inproceedings{boulmerka_thresholding-based_2012,
title = {Thresholding-based segmentation revisited using mixtures of generalized Gaussian distributions},
author = {A. Boulmerka and M. S. Allili},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-84874575463&partnerID=40&md5=0665cce9aa19af524d1213c1ff728d94},
isbn = {978-4-9906441-0-9},
year = {2012},
date = {2012-01-01},
booktitle = {Proceedings - International Conference on Pattern Recognition},
pages = {2894–2897},
address = {Tsukuba},
abstract = {This paper presents a new approach to image-thresholding-based segmentation. It considerably improves existing methods by efficiently modeling non-Gaussian and multi-modal class-conditional distributions. The proposed approach seamlessly: 1) extends the Otsu's method to arbitrary numbers of thresholds and 2) extends the Kittler and Illingworth minimum error thresholding to non-Gaussian and multi-modal class-conditional data. We use the recently-proposed mixture of generalized Gaussian distributions (MoGG) modeling, which enables to efficiently represent heavy-tailed data, as well as multi-modal histograms with flat and sharply-shaped peaks. Experiments performed on synthetic data and real-world image segmentation show the performance of the proposed approach with comparison to recent state-of-the-art techniques. © 2012 ICPR Org Committee.},
note = {ISSN: 10514651},
keywords = {Arbitrary number, Gaussian noise (electronic), Generalized Gaussian Distributions, Heavy-tailed, Image segmentation, Kittler, Minimum error thresholding, Multi-modal, New approaches, Non-Gaussian, Otsu's method, Pattern Recognition, State-of-the-art techniques, Synthetic data},
pubstate = {published},
tppubtype = {inproceedings}
}
This paper presents a new approach to image-thresholding-based segmentation. It considerably improves existing methods by efficiently modeling non-Gaussian and multi-modal class-conditional distributions. The proposed approach seamlessly: 1) extends the Otsu's method to arbitrary numbers of thresholds and 2) extends the Kittler and Illingworth minimum error thresholding to non-Gaussian and multi-modal class-conditional data. We use the recently-proposed mixture of generalized Gaussian distributions (MoGG) modeling, which enables to efficiently represent heavy-tailed data, as well as multi-modal histograms with flat and sharply-shaped peaks. Experiments performed on synthetic data and real-world image segmentation show the performance of the proposed approach with comparison to recent state-of-the-art techniques. © 2012 ICPR Org Committee.