Detection and Segmentation of Retinopathy Diseases using EAD-Net with Fundus Images

G. Sivapriya, V. Praveen, S. Saranya, R. Surya, S. Sweetha
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Abstract

Diabetic retinopathy is one of the major concerns affecting most of the population. It causes the injury in the blood vessels of the retina which is very sensitive to light and is located at the back of the eye, causes this. In the early stages, it may did not cause any symptoms or it will be only minor vision problems. When blood vessels are damaged, they can leak, causing dark spots to appear in our vision. The Diabetic Retinopathy (DR) can be recognized by presence of Hard Exudate, Soft Exudates, Microaneurysms and Haemorrhages. The most important aspect is accurate detection of diseases at an early stage. Manually annotating these scratches is a significant task in clinical survey. This method is completely based on the convolutional neural network and further that can be classified into three modules attention module, encoder module and decoder module. The fundus images were normalised and augmented before sent to the EAD-Net for pixel-wise label forecast and for Self-operating feature extraction. After pre-processing, the image is sent into the EAD Net for training which is followed by testing of an image and finally the segmentation of the image will be done. optimizer is used here is Adam and categorical CE as the loss function. This EAD-Net is the novel method for diagnosing different stages of DR. It produces fitting results with an accuracy of 95 percentage when segmenting 4 different lesions. These active segmentations have significant clinical implications in the monitoring and in the diagnosis of DR.
基于EAD-Net眼底图像的视网膜病变检测与分割
糖尿病视网膜病变是影响大多数人群的主要问题之一。它会损伤视网膜的血管视网膜对光线非常敏感,位于眼睛的后面,会导致这种情况。在早期阶段,它可能不会引起任何症状,或者只是轻微的视力问题。当血管受损时,它们会渗漏,导致我们的视力出现黑斑。糖尿病视网膜病变(DR)可以通过硬渗出物、软渗出物、微动脉瘤和出血来识别。最重要的方面是在早期阶段准确发现疾病。手工标注这些划痕是临床调查中的一项重要任务。该方法完全基于卷积神经网络,并进一步将其分为注意模块、编码器模块和解码器模块三个模块。眼底图像被归一化和增强,然后发送到EAD-Net进行逐像素的标签预测和自操作特征提取。预处理后的图像送入EAD网进行训练,然后对图像进行测试,最后对图像进行分割。这里使用的优化器是Adam和分类CE作为损失函数。这种EAD-Net是诊断dr不同阶段的新方法,它在分割4个不同病变时产生的拟合结果准确率为95%。这些主动分割在DR的监测和诊断中具有重要的临床意义。
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