@InProceedings{BezerraLaLuSeOlBrMe:2018:RoIrSe,
author = "Bezerra, Cides and Laroca, Rayson and Lucio, Diego R. and Severo,
Evair and Oliveira, Lucas F. and Britto Jr, Alceu S. and Menotti,
David",
affiliation = "{Federal University of Parana} and {Federal University of Parana}
and {Federal University of Parana} and {Federal University of
Parana} and {Federal University of Parana} and {Pontifical
Catholic University of Parana} and {Federal University of
Parana}",
title = "Robust Iris Segmentation Based on Fully Convolutional Networks and
Generative Adversarial Networks",
booktitle = "Proceedings...",
year = "2018",
editor = "Ross, Arun and Gastal, Eduardo S. L. and Jorge, Joaquim A. and
Queiroz, Ricardo L. de and Minetto, Rodrigo and Sarkar, Sudeep and
Papa, Jo{\~a}o Paulo and Oliveira, Manuel M. and Arbel{\'a}ez,
Pablo and Mery, Domingo and Oliveira, Maria Cristina Ferreira de
and Spina, Thiago Vallin and Mendes, Caroline Mazetto and Costa,
Henrique S{\'e}rgio Gutierrez and Mejail, Marta Estela and Geus,
Klaus de and Scheer, Sergio",
organization = "Conference on Graphics, Patterns and Images, 31. (SIBGRAPI)",
publisher = "IEEE Computer Society",
address = "Los Alamitos",
keywords = "Biometric, Iris segmentation, Non-cooperative.",
abstract = "The iris can be considered as one of the most important biometric
traits due to its high degree of uniqueness. Iris-based biometrics
applications depend mainly on the iris segmentation whose
suitability is not robust for different environments such as
near-infrared (NIR) and visible (VIS) ones. In this paper, two
approaches for robust iris segmentation based on Fully
Convolutional Networks (FCNs) and Generative Adversarial Networks
(GANs) are described. Similar to a common convolutional network,
but without the fully connected layers (i.e., the classification
layers), an FCN employs at its end a combination of pooling layers
from different convolutional layers. Based on the game theory, a
GAN is designed as two networks competing with each other to
generate the best segmentation. The proposed segmentation networks
achieved promising results in all evaluated datasets (i.e.,
BioSec, CasiaI3, CasiaT4, IITD-1) of NIR images and (NICE.I,
CrEye-Iris and MICHE-I) of VIS images in both non-cooperative and
cooperative domains, outperforming the baselines techniques which
are the best ones found so far in the literature, i.e., a new
state of the art for these datasets. Furthermore, we manually
labeled 2,431 images from CasiaT4, CrEye-Iris and MICHE-I
datasets, making the masks available for research purposes.",
conference-location = "Foz do Igua{\c{c}}u, PR, Brazil",
conference-year = "29 Oct.-1 Nov. 2018",
doi = "10.1109/SIBGRAPI.2018.00043",
url = "http://dx.doi.org/10.1109/SIBGRAPI.2018.00043",
language = "en",
ibi = "8JMKD3MGPAW/3RPB5DL",
url = "http://urlib.net/ibi/8JMKD3MGPAW/3RPB5DL",
targetfile = "2018_SIBGRAPI_IrisSeg.pdf",
urlaccessdate = "2024, Sep. 13"
}