Detection of Hard Exudate for Diabetic Retinopathy Using Unsupervised Classification Method

Noppadol Maneerat, Teerapon Thongpasri, Athasart Narkthewan, C. Kimpan
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引用次数: 2

Abstract

Diabetic retinopathy (DR) causes retinal disorders such as blood vessel blockage, the leaks of blood, and the proteins in water bleeding into the tissues of retina. All of the symptoms lead to the destruction of retina resulting in reduced visibility or finally lose vision. Therefore, this study presents an image processing method to extract hard exudates in the retinal image, which is a serious symptom of diabetic retinopathy using an unsupervised classification method. The proposed hard exudates extraction method composes of 3 steps. Firstly, the optic disc similar to hard exudate is eliminated from the retinal image. Subsequently, the green channel of the RGB color model is selected for data analysis because it represents all hard exudates better than the red and blue channels. The features of hard exudates in the retinal image are then extracted by various methods such as dilation, erosion, entropy analysis, and standard deviation analysis and it also appeared in many dimensions. Finally, the proposed method uses k-mean, which is an unsupervised classification technique for hard exudates clustering. The determination of hard exudates from the retinal image is achieved using two datasets (DIARETDB0 and DIARETDB1). These datasets are usually used for algorithm efficiency analysis to retinal image evaluation. The results show that the maximum specificity is approximate 97%. It indicates that the proposed method can be applied for the automatic detection of diabetic retinopathy.
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非监督分类法检测糖尿病视网膜病变硬渗出液
糖尿病性视网膜病变(DR)会导致视网膜病变,如血管阻塞、血液泄漏、水中的蛋白质出血到视网膜组织中。所有这些症状都会导致视网膜的破坏,从而导致能见度降低或最终失明。因此,本研究提出了一种采用无监督分类方法提取视网膜图像中作为糖尿病视网膜病变严重症状的硬渗出物的图像处理方法。本文提出的硬渗出物提取方法分为3个步骤。首先,从视网膜图像中去除类似硬渗出物的视盘。随后,选择RGB颜色模型中的绿色通道进行数据分析,因为绿色通道比红色和蓝色通道更能代表所有硬渗出物。然后通过扩张、侵蚀、熵分析、标准差分析等多种方法提取视网膜图像中硬渗出物的特征,并在多个维度上表现出来。最后,提出的方法使用k-mean,这是一种用于硬渗出物聚类的无监督分类技术。使用两个数据集(DIARETDB0和DIARETDB1)来确定视网膜图像中的硬渗出物。这些数据集通常用于视网膜图像评估的算法效率分析。结果表明,最大特异性约为97%。结果表明,该方法可用于糖尿病视网膜病变的自动检测。
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