Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification

Ocular thermography is an important, emerging modality in the diagnosis and management of diseases related to eye. It is a non-invasive procedure to evaluate the presence of eye diseases and monitor the response to treatments. In this paper, we propose and evaluate a system designed using infrared t...

Full description

Bibliographic Details
Main Authors: Padmapriya Nammalwar, Venkateswaran Narasimhan, Toshitha Kannan, SindhuMadhuri Morapakala
Format: Article
Language:English
Published: University of Zagreb Faculty of Electrical Engineering and Computing 2017-01-01
Series:Journal of Computing and Information Technology
Subjects:
Online Access:http://hrcak.srce.hr/file/277643
id doaj-922e27d4f5184bc193e79510af325265
record_format Article
spelling doaj-922e27d4f5184bc193e79510af3252652020-11-24T22:54:32ZengUniversity of Zagreb Faculty of Electrical Engineering and ComputingJournal of Computing and Information Technology1330-11361846-39082017-01-01253227236Non-invasive Glaucoma Screening Using Ocular Thermal Image ClassificationPadmapriya NammalwarVenkateswaran NarasimhanToshitha KannanSindhuMadhuri MorapakalaOcular thermography is an important, emerging modality in the diagnosis and management of diseases related to eye. It is a non-invasive procedure to evaluate the presence of eye diseases and monitor the response to treatments. In this paper, we propose and evaluate a system designed using infrared thermal image processing that detects glaucoma. Euclidean distance based segmentation technique is used to threshold the IR image to obtain the region of interest, where the manifestation of glaucoma is predominant. Features are extracted using statistical moments from the temperature mapped IR image and Gray Level Co-Occurrence Matrix of the IR image. Two significant attributes, namely the homogeneity and area of region of interest are the inputs to a Support Vector Machine classifier to classify a given input ocular thermal image as a normal or diseased image. In our simulation study, one hundred ocular thermal images with even number of normal and diseased subjects were analysed. The classifier has achieved a maximum accuracy of 96% when homogeneity and area of region of interest are used as attributes, indicating the potential use of proposed method for screening patients even at early stages of glaucoma.http://hrcak.srce.hr/file/277643thermal imagingglaucomasupport vector machinetemperature mappinggray level co-occurrence matrices
collection DOAJ
language English
format Article
sources DOAJ
author Padmapriya Nammalwar
Venkateswaran Narasimhan
Toshitha Kannan
SindhuMadhuri Morapakala
spellingShingle Padmapriya Nammalwar
Venkateswaran Narasimhan
Toshitha Kannan
SindhuMadhuri Morapakala
Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
Journal of Computing and Information Technology
thermal imaging
glaucoma
support vector machine
temperature mapping
gray level co-occurrence matrices
author_facet Padmapriya Nammalwar
Venkateswaran Narasimhan
Toshitha Kannan
SindhuMadhuri Morapakala
author_sort Padmapriya Nammalwar
title Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
title_short Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
title_full Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
title_fullStr Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
title_full_unstemmed Non-invasive Glaucoma Screening Using Ocular Thermal Image Classification
title_sort non-invasive glaucoma screening using ocular thermal image classification
publisher University of Zagreb Faculty of Electrical Engineering and Computing
series Journal of Computing and Information Technology
issn 1330-1136
1846-3908
publishDate 2017-01-01
description Ocular thermography is an important, emerging modality in the diagnosis and management of diseases related to eye. It is a non-invasive procedure to evaluate the presence of eye diseases and monitor the response to treatments. In this paper, we propose and evaluate a system designed using infrared thermal image processing that detects glaucoma. Euclidean distance based segmentation technique is used to threshold the IR image to obtain the region of interest, where the manifestation of glaucoma is predominant. Features are extracted using statistical moments from the temperature mapped IR image and Gray Level Co-Occurrence Matrix of the IR image. Two significant attributes, namely the homogeneity and area of region of interest are the inputs to a Support Vector Machine classifier to classify a given input ocular thermal image as a normal or diseased image. In our simulation study, one hundred ocular thermal images with even number of normal and diseased subjects were analysed. The classifier has achieved a maximum accuracy of 96% when homogeneity and area of region of interest are used as attributes, indicating the potential use of proposed method for screening patients even at early stages of glaucoma.
topic thermal imaging
glaucoma
support vector machine
temperature mapping
gray level co-occurrence matrices
url http://hrcak.srce.hr/file/277643
work_keys_str_mv AT padmapriyanammalwar noninvasiveglaucomascreeningusingocularthermalimageclassification
AT venkateswarannarasimhan noninvasiveglaucomascreeningusingocularthermalimageclassification
AT toshithakannan noninvasiveglaucomascreeningusingocularthermalimageclassification
AT sindhumadhurimorapakala noninvasiveglaucomascreeningusingocularthermalimageclassification
_version_ 1725659210995204096