Optical Cup and Disc Segmentation using Deep Learning Technique for Glaucoma Detection

P. Parkhi, Bhagyashree Hambarde Hambarde
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引用次数: 1

Abstract

The optic nerve damaging condition called Glaucoma. This disease is increment at an alarming rate. By the end of the 2044 there is possibility that across 111.8 million populations will be influenced by glaucoma. It is a neurodegenerative disease. If intravascular pressure is increases, optic nerve of the eye gets damage. This damage may cause permanent or total blindness in person. The Glaucoma is examined by an experienced ophthalmologist on the retinal part of the eye. This process required excessive equipment, experienced medical practitioners and also it take more time to work out manually. After considering this problem there is an extreme requirement of developing an automatic system which will effectively and automatically work properly in lack of any professional doctor and it should also take less time. Lots of different parameters are available to detect glaucoma but thebest parameter is to find out optical cup-to-disc-ratio. To increase or to enhance the precision and accuracy of the result, cup to disc value is needed to find CDR value. In order to detect glaucoma, automatic separation of the OC and DC is very essential to avoid any error. We use deeplabv3 architecture to perform segmentation of optic disc and cup and classification is done using ensemble machine learning. This proposes research achieve intersection over union (IOU) scores, 0.9423 for optic disc and 0.9310 for optic cup. We perform testing on globally accessible data-sets i.e. DRISHTI, ORIGA, and RIMONE with accuracy of 93%, 91% and 92% respectively
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基于深度学习技术的青光眼光学杯盘分割
这种视神经损伤被称为青光眼。这种疾病正以惊人的速度增长。到本世纪末,有可能有1.118亿人口将受到青光眼的影响。这是一种神经退行性疾病。如果血管内压力升高,眼睛的视神经就会受到损伤。这种损害可能导致永久或完全失明。青光眼由经验丰富的眼科医生检查眼睛的视网膜部分。这一过程需要大量的设备和经验丰富的医生,而且需要更多的时间来手工完成。考虑到这一问题,迫切需要开发一种能够在没有专业医生的情况下有效、自动地正常工作的自动化系统,并且需要更少的时间。青光眼的检测参数有很多,但最好的参数是光学杯盘比。为了增加或提高结果的精度和准确性,需要用杯盘值来寻找CDR值。为了检测青光眼,自动分离OC和DC是非常必要的,以避免任何错误。我们使用deepplabv3架构进行视盘和视杯的分割,并使用集成机器学习完成分类。本文提出的研究实现了视盘和视杯的IOU (intersection over union)分数分别为0.9423和0.9310。我们在全球可访问的数据集(即DRISHTI, ORIGA和RIMONE)上进行测试,准确率分别为93%,91%和92%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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