Detection of diabetic Retinopathy using Retinal Fundus Images

Lalitha Krishnasamy, Rajesh Kumar Dhanaraj, Monika Gupta, Priti Rai, K. Sruthi, Gopika T
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Abstract

Diabetic retinopathy is one of the diabetes consequences that affects the eyes. This is caused by damage to the blood vessels in the retina, the light-sensitive tissue in the rear of the eye. It may create no symptoms at first, or it may cause minor eyesight difficulties. When the blood vessels become damaged, they may leak and this leakage can cause dark spots on our vision. The DR can be detected by finding the Hard Exudate present in it. The deep networks are becoming deeper and more complex. So that adding more number of layers to a neural network can make it stronger for image related tasks. But the main disadvantage in adding more layers is that, it may greatly reduces the accuracy of the image and also the data models are complex. In order to overcome this drawback, Recurrent Neural Network can be introduced. The fundamental benefit of using a recurrent neural network is that it can represent a collection of data in such a way that each pattern may be presumed to be reliant on the one before it. It can process inputs of any length. Even if the input size is large, the model size will not change. It makes the training process faster and attains more accuracy while compared to other neural networks. This method greatly reduces the loss of accuracy because each layer knows the information of the top layers while updating the weights. This Recurrent Neural Network has more number of parameters , so it is obvious that it can produce better result as compared to other net.
利用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糖尿病影响眼睛的后果之一。这是由于视网膜的血管受损造成的,视网膜是眼睛后部的光敏组织。它可能一开始没有任何症状,或者可能引起轻微的视力障碍。当血管受损时,它们可能会渗漏,这种渗漏会导致我们的视力出现黑斑。DR可以通过寻找其中存在的硬渗出物来检测。深层网络正变得越来越深,越来越复杂。因此,向神经网络中添加更多的层数可以使其在图像相关任务中更强大。但增加更多的层的主要缺点是,它可能会大大降低图像的精度,并且数据模型复杂。为了克服这一缺点,可以引入递归神经网络。使用递归神经网络的根本好处是,它可以以这样一种方式表示数据集,即每个模式都可以假定依赖于它之前的模式。它可以处理任何长度的输入。即使输入大小很大,模型大小也不会改变。与其他神经网络相比,它使训练过程更快,达到更高的准确性。由于每一层在更新权重时都知道顶层的信息,因此该方法大大降低了精度损失。这种递归神经网络具有更多的参数,因此与其他网络相比,它显然可以产生更好的结果。
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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