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Detection of Hard Exudates in Fundus Images Using Convolutional Neural Networks

机译:利用卷积神经网络检测眼底图像中的硬性渗出液

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The patients with diabetes have a chance to have blindness. An impairment of metabolism can cause a high glucose level in blood vessel leading to an abnormality called hard exudates. Hard exudates are often arranged in clumps or circinate rings and located in the outer layer of the retina. The aim of this research is to detect hard exudates by applying image processing techniques and classify them by using convolutional neuron network (CNN). DIARETDB1 dataset is used in the experiments. The proposed method achieves the area under the curve (AUC) of 0.97 and 0.95 on the training and validation sets, respectively, of 10-fold cross validation experiment. These show that the combination of image processing techniques, three channels of fundus images, and CNN can perform as a promising classification tool in hard exudates detection system.
机译:糖尿病患者有失明的机会。新陈代谢障碍可导致血管中高葡萄糖水平,从而导致称为硬性渗出液的异常。硬性渗出液通常排列成团或环状,并位于视网膜的外层。这项研究的目的是通过应用图像处理技术来检测硬质渗出液,并使用卷积神经元网络(CNN)对它们进行分类。实验中使用了DIARETDB1数据集。所提出的方法在10倍交叉验证实验的训练集和验证集上分别获得0.97和0.95的曲线下面积(AUC)。这些表明,图像处理技术,眼底图像的三个通道和CNN的结合可以在硬性渗出液检测系统中用作有前途的分类工具。

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