Harnessing the Strength of ResNet50 to Improve the Ocular Disease Recognition

Gunjan Sharma, Vatsala Anand, Sheifali Gupta
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引用次数: 1

Abstract

Among the most prevalent eye conditions, cataract is the leading cause of blindness, impairing vision. A cataract is a condition that means clouding of the lens of the eye. Cataract-related blindness can be mainly prevented with early detection and prompt treatment. Artificial intelligence systems that grade cataracts based on fundus pictures are a practical way to help clinicians detect cataracts more accurately. For early detection of cataracts, Convolutional neural networks, also referred to as CNNs, have been reported to have a great deal of promise in several different domains, including the identification of many eye illnesses. In this research, a deep CNN model based on ResNet50 architecture has been proposed to classify the images into cataract-infected and normal classes. For fulfilling this task Ocular Disease Intelligent Recognition dataset has been chosen. This dataset contains real-time patient reports of both eyes. The model has shown a very good accuracy of 95.63% and 90.37% of validation accuracy while using SGD optimizer. The loss was 0.64 which is nominal and this model has shown very promising results in classifying the images. This model has a very innovative approach in the medical field so it can be used as a tool in the biomedical or healthcare field.
利用ResNet50的优势提高眼部疾病的识别
在最常见的眼部疾病中,白内障是导致失明、损害视力的主要原因。白内障是一种眼睛晶状体混浊的情况。白内障相关性失明主要可以通过早期发现和及时治疗来预防。根据眼底图片对白内障进行分级的人工智能系统是一种实用的方法,可以帮助临床医生更准确地检测白内障。据报道,对于白内障的早期检测,卷积神经网络,也被称为cnn,在几个不同的领域有很大的前景,包括许多眼疾的识别。本研究提出了一种基于ResNet50架构的深度CNN模型,将图像分为白内障感染类和正常类。为了完成这一任务,选择了眼部疾病智能识别数据集。该数据集包含患者双眼的实时报告。在使用SGD优化器时,模型的验证准确率达到95.63%,验证准确率达到90.37%。损失为0.64,这是名义上的,该模型在图像分类中显示出非常有希望的结果。该模型在医学领域具有非常创新的方法,因此可以用作生物医学或医疗保健领域的工具。
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