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Optic Disc Segmentation in Retinal Fundus Images Using Fully Convolutional Network and Removal of False-Positives Based on Shape Features

机译:基于全卷积网络的视网膜眼底图像视盘分割及基于形状特征的假阳性去除

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摘要

In today's world blindness is a major concern in working population and diseases like glaucoma, diabetic retinopathy are main causes for this. Early and fast detection using automated software system can be a great help in this area. For that one major step is to detect and segment the optic disc (OD) in retinal fundus image. In this paper we have used U-Net based fully convolutional network to segment OD. U-Net is a very efficient architecture in image segmentation particularly in the area where availability of input images are very less. We have first trained U-Net from scratch on the extended Messidor dataset. It is then evaluated using three-fold cross validation on MESSIDOR image dataset. During the process we have removed false positives based on morphological operation and shape features. We have seen this method has outperformed existing techniques in OD segmentation on the images affected by diabetic retinopathy.
机译:在当今世界,失明是工作人口中的一个主要问题,青光眼等疾病,糖尿病性视网膜病是导致失明的主要原因。使用自动化软件系统进行早期和快速检测可以在此领域提供巨大帮助。为此,主要步骤是检测并分割视网膜眼底图像中的视盘(OD)。在本文中,我们使用了基于U-Net的全卷积网络来分割OD。在图像分割方面,U-Net是一种非常有效的体系结构,尤其是在输入图像的可用性很少的区域。我们首先在扩展的Messidor数据集上从头开始培训U-Net。然后在MESSIDOR图像数据集上使用三重交叉验证对它进行评估。在此过程中,我们已根据形态操作和形状特征消除了误报。我们已经看到,在受糖尿病性视网膜病变影响的图像上,该方法在OD分割方面的性能优于现有技术。

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