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An Automated Early Detection of Glaucoma using Support Vector Machine Based Visual Geometry Group 19 (VGG-19) Convolutional Neural Network

机译:基于支持向量机的视觉几何组19(VGG-19)卷积神经网络的自动早期检测青光眼

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摘要

Deep learning is a useful technique for investigating the medicinal images. Glaucoma is a neurotic condition, dynamic neuro degeneration of the optic nerve, which leads visual impairment. It could be forestalled by an early detection of glaucoma and the regular screening with specialist for glaucoma diagnosis. Glaucoma is assessed by observing intra ocular pressure and optic Cup-Disc-Ratio (CDR). In this paper, novel mechanized glaucoma recognition has been performed by utilizing computer supported analysis from fundus images. The simulation outcomes are acquired by utilizing a Support Vector Machine based VGG-19 network architecture. The CDR threshold value of 0.41 has been used for glaucoma recognition. The fundus images which has the CDR greater than 0.41 is treated as glaucoma affected and less than 0.41 is non-glaucoma fundus images. The proposed glaucoma recognition system works with reasonable to obtain and generally utilized digital color fundus images. For the set of 175 fundus images a classification precision of 94% has been accomplished.
机译:深入研究医学图像是一种有用的学习方法。青光眼是一种神经性疾病,是视神经的动态神经变性,可导致视力损害。可以通过早期发现青光眼和与青光眼诊断专家定期筛查来预防。通过观察眼内压和视杯-盘比率(CDR)来评估青光眼。本文利用计算机支持的眼底图像分析技术,对新型机械化青光眼进行了识别。仿真结果通过基于支持向量机的VGG-19网络结构获得。CDR阈值0.41已用于青光眼识别。CDR大于0.41的眼底图像被视为青光眼受累图像,小于0.41的眼底图像被视为非青光眼眼底图像。所提出的青光眼识别系统能够合理地获取并广泛使用数字彩色眼底图像。对于175张眼底图像,分类精度达到94%。

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