Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images
Glaucoma, the silent thief of vision, is mostly caused by the gradual increase of pressure in the eye which is known as intraocular pressure (IOP). An effective way to prevent the rise in eye pressure is by early detection. Prior computer vision-based work regarding IOP relies on fundus images of th...
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doaj-9c20a786dc93440c99904a58cc21a28b2021-03-29T18:40:21ZengIEEEIEEE Journal of Translational Engineering in Health and Medicine2168-23722019-01-01711310.1109/JTEHM.2019.29155348709956Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye ImagesMohammad Aloudat0Miad Faezipour1https://orcid.org/0000-0003-2684-0887Ahmed El-Sayed2https://orcid.org/0000-0003-4746-9095Department of Computer Science and Engineering, University of Bridgeport, Bridgeport, CT, USADepartment of Computer Science and Engineering, University of Bridgeport, Bridgeport, CT, USADepartment of Computer Science and Engineering, University of Bridgeport, Bridgeport, CT, USAGlaucoma, the silent thief of vision, is mostly caused by the gradual increase of pressure in the eye which is known as intraocular pressure (IOP). An effective way to prevent the rise in eye pressure is by early detection. Prior computer vision-based work regarding IOP relies on fundus images of the optic nerves. This paper provides a novel vision-based framework to help in the initial IOP screening using only frontal eye images. The framework first introduces the utilization of a fully convolutional neural (FCN) network on frontal eye images for sclera and iris segmentation. Using these extracted areas, six features that include mean redness level of the sclera, red area percentage, Pupil/Iris diameter ratio, and three sclera contour features (distance, area, and angle) are computed. A database of images from the Princess Basma Hospital is used in this work, containing 400 facial images; 200 cases with normal IOP; and 200 cases with high IOP. Once the features are extracted, two classifiers (support vector machine and decision tree) are applied to obtain the status of the patients in terms of IOP (normal or high). The overall accuracy of the proposed framework is over 97.75% using the decision tree. The novelties and contributions of this work include introducing a fully convolutional network architecture for eye sclera segmentation, in addition to scientifically correlating the frontal eye view (image) with IOP by introducing new sclera contour features that have not been previously introduced in the literature from frontal eye images for IOP status determination.https://ieeexplore.ieee.org/document/8709956/Computer visioneye segmentationfully convolutional networkGlaucomaintraocular pressurePupil/Iris ratio |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mohammad Aloudat Miad Faezipour Ahmed El-Sayed |
spellingShingle |
Mohammad Aloudat Miad Faezipour Ahmed El-Sayed Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images IEEE Journal of Translational Engineering in Health and Medicine Computer vision eye segmentation fully convolutional network Glaucoma intraocular pressure Pupil/Iris ratio |
author_facet |
Mohammad Aloudat Miad Faezipour Ahmed El-Sayed |
author_sort |
Mohammad Aloudat |
title |
Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images |
title_short |
Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images |
title_full |
Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images |
title_fullStr |
Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images |
title_full_unstemmed |
Automated Vision-Based High Intraocular Pressure Detection Using Frontal Eye Images |
title_sort |
automated vision-based high intraocular pressure detection using frontal eye images |
publisher |
IEEE |
series |
IEEE Journal of Translational Engineering in Health and Medicine |
issn |
2168-2372 |
publishDate |
2019-01-01 |
description |
Glaucoma, the silent thief of vision, is mostly caused by the gradual increase of pressure in the eye which is known as intraocular pressure (IOP). An effective way to prevent the rise in eye pressure is by early detection. Prior computer vision-based work regarding IOP relies on fundus images of the optic nerves. This paper provides a novel vision-based framework to help in the initial IOP screening using only frontal eye images. The framework first introduces the utilization of a fully convolutional neural (FCN) network on frontal eye images for sclera and iris segmentation. Using these extracted areas, six features that include mean redness level of the sclera, red area percentage, Pupil/Iris diameter ratio, and three sclera contour features (distance, area, and angle) are computed. A database of images from the Princess Basma Hospital is used in this work, containing 400 facial images; 200 cases with normal IOP; and 200 cases with high IOP. Once the features are extracted, two classifiers (support vector machine and decision tree) are applied to obtain the status of the patients in terms of IOP (normal or high). The overall accuracy of the proposed framework is over 97.75% using the decision tree. The novelties and contributions of this work include introducing a fully convolutional network architecture for eye sclera segmentation, in addition to scientifically correlating the frontal eye view (image) with IOP by introducing new sclera contour features that have not been previously introduced in the literature from frontal eye images for IOP status determination. |
topic |
Computer vision eye segmentation fully convolutional network Glaucoma intraocular pressure Pupil/Iris ratio |
url |
https://ieeexplore.ieee.org/document/8709956/ |
work_keys_str_mv |
AT mohammadaloudat automatedvisionbasedhighintraocularpressuredetectionusingfrontaleyeimages AT miadfaezipour automatedvisionbasedhighintraocularpressuredetectionusingfrontaleyeimages AT ahmedelsayed automatedvisionbasedhighintraocularpressuredetectionusingfrontaleyeimages |
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