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Exudates detection in fundus images using mean-shift segmentation and adaptive thresholding

机译:使用平均移位分割和自适应阈值化渗出眼底图像中的检测

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Diabetic retinopathy (DR) affects changes to retinal blood vessels that can cause them to bleed or leak fluid and distorting vision. An early detection of exudates is a prerequisite for detecting and grading severe retinal lesions, like DR. This paper presents an automated method for detection of the exudates in digital fundus images. Our approach can be divided into four steps: shifting colour correction, Optic disc (OD) elimination, exudates segmentation and separation of exudates from background. In order to correct non-uniform illumination, we adopted the grey world method.Then, we must extract the OD prior to the process because it appears with similar colour, intensity and contrast to exudates. Next, to segment the exudates, we applied the mean-shift method. Finally, we used the maximum entropy thresholding to separate the exudates from background. The proposed method is tested on DIARETDBO and DIARETDB1. Comparing to other recent methods available in the literature, our proposed approach obtains better exudate detection results in terms of sensitivity, specificity and accuracy.
机译:糖尿病视网膜病变(DR)影响视网膜血管的变化,这可能导致它们流出或泄漏液体和扭曲视力。早期发现渗出物是检测和分级严重视网膜病变的先决条件,如DR。本文介绍了一种自动化方法,用于检测数字基底图像中的渗出物。我们的方法可分为四个步骤:换色校正,光盘(OD)消除,渗出分割和从背景中分离出渗出物。为了纠正非均匀的照明,我们采用了灰色世界方法。然后,我们必须在过程之前提取OD,因为它出现在与渗出物相似的颜色,强度和对比度。接下来,要分段渗出物,我们应用了平均换档方法。最后,我们使用了最大熵阈值,以将渗出物与背景分开。所提出的方法在DiaRetdbo和DiaRetdB1上进行测试。与文献中可用的其他最近的方法相比,我们所提出的方法在灵敏度,特异性和准确性方面获得更好的渗出物检测结果。

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