Deep Learning System for Detecting the Diabetic Retinopathy

Faisal Hayat, Rabbia Mahum
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Abstract

Retinal blood veins of an eyes are destructive directly by DR that is Complexity of diabetes. Firstly, it becomes problematic for an eye vision. However, if it develops on serious condition, it can badly affect for both eyes and moreover, it can damage the eyesight partly or completely. Primarily it happens because of the blood having excess sugar level. Thus, the diabetic patient is at high risk to attain such disease who has diabetes sugary constantly. Primary detection of this disease can totally discourage the likelihood of blindness. Therefore, well-organized system for screening is mandatory. This procedure reflects the deep learning practice particularly densely connected conv. network DenseNet-169 that is functional for primarily diagnosis the DR. Pics are ordered on the basis of their harshness level i.e. NDR (Nil Diabetic Retinopathy), MDR (Mild DR), MoDR (MoD. Diabetic Retinopathy), Severe & PDR. Kaggle is the source of data for this process to driveDR detection. The recommended method consists of several stages including Data info/collecting, info/preprocessing, augmentation of data and modelling/demonstrating.
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糖尿病视网膜病变检测的深度学习系统
糖尿病是一种复杂的疾病,它直接破坏眼睛的视网膜血管。首先,它会影响视力。然而,如果病情严重,它会严重影响双眼,而且,它会部分或完全损害视力。这主要是因为血液中的糖分过高。因此,长期患有糖尿病的糖尿病患者患此病的风险较高。这种疾病的初步检测可以完全降低失明的可能性。因此,组织良好的筛选系统是必不可少的。这个过程反映了深度学习实践,特别是密集连接的卷积网络DenseNet-169,它主要用于诊断DR。Pics根据其严重程度排序,即NDR(无糖尿病视网膜病变),MDR(轻度糖尿病视网膜病变),MoDR(糖尿病视网膜病变),严重和PDR。Kaggle是驱动dr检测过程的数据来源。建议的方法包括几个阶段,包括数据信息/收集、信息/预处理、数据增强和建模/演示。
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