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Allili, M. S.; Bouguila, N.; Ziou, D.
Finite general Gaussian mixture modeling and application to image and video foreground segmentation Journal Article
In: Journal of Electronic Imaging, vol. 17, no. 1, 2008, ISSN: 10179909.
Abstract | Links | BibTeX | Tags: Finite mixture models, Foreground segmentation, Gaussian distribution, Gaussian mixture modeling, Gaussian mixtures, Gaussians, General Gaussian distribution, Image segmentation, Information theory, Information-theoretic approach, Maximum likelihood estimation, Mixture model, Mixtures, Noisy data, Overfitting
@article{allili_finite_2008,
title = {Finite general Gaussian mixture modeling and application to image and video foreground segmentation},
author = {M. S. Allili and N. Bouguila and D. Ziou},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-78149489170&doi=10.1117%2f1.2898125&partnerID=40&md5=8a9b3060dda2366f17b22a06606a9f09},
doi = {10.1117/1.2898125},
issn = {10179909},
year = {2008},
date = {2008-01-01},
journal = {Journal of Electronic Imaging},
volume = {17},
number = {1},
abstract = {We propose a new finite mixture model based on the formalism of general Gaussian distribution (GGD). Because it has the flexibility to adapt to the shape of the data better than the Gaussian, the GGD is less prone to overfitting the number of mixture classes when dealing with noisy data. In the first part of this work, we propose a derivation of the maximum likelihood estimation for the parameters of the new mixture model, and elaborate an information-theoretic approach for the selection of the number of classes. In the second part, we validate the proposed model by comparing it to the Gaussian mixture in applications related to image and video foreground segmentation © 2008 SPIE and IS&T.},
keywords = {Finite mixture models, Foreground segmentation, Gaussian distribution, Gaussian mixture modeling, Gaussian mixtures, Gaussians, General Gaussian distribution, Image segmentation, Information theory, Information-theoretic approach, Maximum likelihood estimation, Mixture model, Mixtures, Noisy data, Overfitting},
pubstate = {published},
tppubtype = {article}
}
Chartier, S.; Renaud, P.
An online noise filter for eye-tracker data recorded in a virtual environment Proceedings Article
In: Eye Tracking Research and Applications Symposium (ETRA), pp. 153–156, Savannah, GA, 2008, ISBN: 978-159593982-1 (ISBN), (Journal Abbreviation: Eye Track. Res. Appl. Symp. (ETRA)).
Abstract | Links | BibTeX | Tags: Average filter, Eye trackers, Eye-blinks, Eye-tracker, Eye-tracker data, Noise filters, Noise removal, Noisy data, Off-line filters, Online filtering, Virtual environments, virtual reality
@inproceedings{chartier_online_2008,
title = {An online noise filter for eye-tracker data recorded in a virtual environment},
author = {S. Chartier and P. Renaud},
url = {https://www.scopus.com/inward/record.uri?eid=2-s2.0-77950329450&doi=10.1145%2f1344471.1344511&partnerID=40&md5=7ba397a215e76c9d511800ccb267b5cd},
doi = {10.1145/1344471.1344511},
isbn = {978-159593982-1 (ISBN)},
year = {2008},
date = {2008-01-01},
booktitle = {Eye Tracking Research and Applications Symposium (ETRA)},
pages = {153–156},
address = {Savannah, GA},
abstract = {A Recursive Online Weight Average filter (ROWA) is proposed to remove and replace noisy data obtained from eye tracker. Since the filter can be implemented online, it can detect and replace noisy data using solely past records. Simulations results indicate that the filter achieved the same performance compared to other standard offline filters while being simpler. Copyright © 2008 by the Association for Computing Machinery, Inc.},
note = {Journal Abbreviation: Eye Track. Res. Appl. Symp. (ETRA)},
keywords = {Average filter, Eye trackers, Eye-blinks, Eye-tracker, Eye-tracker data, Noise filters, Noise removal, Noisy data, Off-line filters, Online filtering, Virtual environments, virtual reality},
pubstate = {published},
tppubtype = {inproceedings}
}