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An Effective Identification of Microaneurysm in Retinal Eye Using ConvNet with Adam Optimizer

机译:使用Adam优化器的Convnet有效鉴定视网膜眼中的微型肌瘤

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This research work outlines a framework to diagnose the Diabetic Retinopathy (DR) from colour fundus images by applying deep learning techniques. ConvNet with Adam Optimization approach is applied for early identification of Microaneurysm occurring in retina of the eye and also for classifying its severity accurately. The data augmentation attribute of ConvNet with Adam Optimiser helps to overcome the complications involved in the categorization task such as non microaneurysm and microaneurysm in human eye. The ConvNet with Adam optimization helps to achieve high accuracy rate, by reducing false positive rate and is demonstrated with the help of high end graphics processor with available kaggle datasets, for a high level classification.
机译:该研究工作概述了通过应用深度学习技术来诊断糖尿病视网膜病变(DR)的框架。 具有ADAM优化方法的GROMNET用于早期鉴定眼睛的视网膜中的微型肌瘤,也可以准确分类其严重程度。 Grandnet与ADAM优化器的数据增强属性有助于克服分类任务所涉及的并发症,例如人眼中非微型肌肤症和MicroNeeurySm。 ConvNet通过降低假阳性率,通过降低假阳性率来实现高精度率,并在高级别分类中借助具有可用的滑动数据集的高端图形处理器进行说明,有助于实现高精度率。

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