Deep Learning Based Detection of Diabetic Retinopathy using Retinal Fundus Images

C. Kumari, A. Hemanth, Veda Anand, D. Kumar, R. Naga Sanjeev, T. S. Sri Harshitha
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Abstract

Diabetic retinopathy is a type of diabetes which affects the eye by causing damage to retinal blood vessels. It may have no symptoms at first or cause diminished vision problems. As the condition deteriorates, it affects both eyes, leading to partial or complete loss of vision. This is especially so when blood sugar levels are uncontrollable. As a result, the diabetic patient is at greater risk for developing this condition. The risk of complete and permanent blindness can be avoided if an early detection is made. As a result, effective screening method is required. In this paper the four salient features microaneurysms, blood vessels, hemorrhages and exudates are drawn out from the unprocessed images using image-processing techniques and convolutional neural network is used for automatic identification and it implements fundus images classification of Diabetic Retinopathy. The pre-trained CNNs use DenseNet-169. The transferred CNNs are then fine-tuned using the fundus images. Pre-trained CNN models were considered as feature extractors for fundus pictures. As features, the outputs of the final fully connected layers are used. By using DenseNet-16 the highest accuracy is obtained compared to remaining models. The ensuing result displays visual examples as well as images of the corresponding DRIVE database basic facts. The model is further trained with a Conv2 layer with 128 filters to improve accuracy, and greater integration is used to obtain an accuracy of 80%.
基于深度学习的视网膜眼底图像检测糖尿病视网膜病变
糖尿病视网膜病变是一种糖尿病,它通过引起视网膜血管损伤来影响眼睛。它可能一开始没有任何症状,或导致视力下降。随着病情恶化,它会影响双眼,导致部分或完全丧失视力。当血糖水平无法控制时尤其如此。因此,糖尿病患者患这种疾病的风险更大。如果及早发现,完全和永久失明的风险是可以避免的。因此,需要有效的筛选方法。本文利用图像处理技术从未处理图像中提取出微动脉瘤、血管、出血和渗出四个显著特征,并利用卷积神经网络进行自动识别,实现了糖尿病视网膜病变眼底图像的分类。预训练的cnn使用DenseNet-169。然后使用眼底图像对转移的cnn进行微调。将预训练好的CNN模型作为眼底图像的特征提取器。作为特征,使用最终完全连接层的输出。与其他模型相比,使用DenseNet-16获得了最高的精度。随后的结果显示了可视化示例以及相应的DRIVE数据库基本事实的图像。进一步使用包含128个滤波器的Conv2层来训练模型以提高准确率,并使用更大的积分来获得80%的准确率。
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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