使用深度学习的多种眼病检测

Q4 Environmental Science Iranian Journal of Botany Pub Date : 2023-01-10 DOI:10.33897/fujeas.v3i2.689
Rashid Amin, Adeel Ahmed, Syed Shabih Ul Hasan, Habib Akbar
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引用次数: 0

摘要

由于创伤、衰老和糖尿病等疾病,人类的眼睛容易出现几种异常。世界范围内致盲的主要因素有青光眼、白内障、黄斑变性和糖尿病视网膜病变等。这些眼病需要及时发现和诊断,并进行适当的治疗,以解决这一问题。多种眼病检测通过对各种医学图像的分析,可以提供对眼病的及时诊断。使用深度学习进行多重眼病检测涉及的步骤是图像获取、感兴趣区域提取、特征提取以及特定疾病的分类或检测。本文使用Resnet、vgg16模型等深度学习模型检测葡萄膜炎、青光眼、斗鸡眼、眼鼓、白内障等疾病。我们使用Resnet50获得了92%的准确率,使用vgg16模型获得了79%的准确率。
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Multiple eye disease detection using deep learning
Human eyes are vulnerable to several abnormalities because of trauma, aging and disease like diabetes. The main factors of blindness around the world are glaucoma, cataract, macular degeneration and diabetic retinopathy etc. These eye diseases need to be detected and diagnosed timely with appropriate treatment for the solution of this problem. Multiple eye disease detection by analyzing various medical images can provide a timely diagnosis of eye diseases. The steps that are involved in multiple eye disease detection using deep learning are the acquisition of images, region of interest extraction, extraction of features and classification or detection of a particular disease. In this paper, diseases like uveitis, glaucoma, crossed eyes, bulging eyes and cataracts have been detected using deep learning models like Resnet and vgg16 model. We have obtained 92% accuracy using Resnet50 and 79% accuracy using the vgg16 model.
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来源期刊
Iranian Journal of Botany
Iranian Journal of Botany Environmental Science-Ecology
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0.80
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