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Detection of exudates from retinal images using morphological compact tree

机译:使用形态学紧凑树从视网膜图像中检测渗出液

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Exudates are an important sign of Diabetic Retinopathy. Retinal Exudates are formed when lipid leakage occurs from damage capillaries. They are deep yellowish in colour and can be easily confused with other yellowish regions in retina. Detection of exudates is very important for developing an automated screening system for detection of diabetic retinopathy. In this paper we focus on detection of exudates through morphological compact tree. We did some pre-processing for removal of noise and enhancement of image. Blobbing technique was applied and all the connected pixels were counted as single blob. These blobs are then passed through an area filter which removes blobs with very large areas. The remaining blobs are then divided into three categories small, medium and large. The medium and large blobs are again fed into pre-processing mode one by one to remove strong boundaries effect and extract the exact suspected candidate location. All the blobs are then passed through morphological compact tree of filters which removes the non-exudates regions through different. For each image different set of threshold values for the filters are required. In our technique we are setting it manually but further research is needed to find out the optimal threshold values or a technique which can calculate adaptive thresholds values for these filters. This is very simple method for the detection of exudates as it uses only a morphological filtration tree. 10 images of dimension 500*752 were analysed in this experiment. The results were compared with ophthalmologist's hand drawn ground truths. Mean recall of 78 percent and mean precision of 56 percent were obtained.
机译:渗出液是糖尿病性视网膜病的重要标志。当受损的毛细血管发生脂质渗漏时,就会形成视网膜渗出液。它们的颜色为深黄色,很容易与视网膜中的其他淡黄色区域混淆。渗出液的检测对于开发用于检测糖尿病性视网膜病的自动化筛查系统非常重要。在本文中,我们着重于通过形态紧凑树检测渗出液。我们进行了一些预处理,以去除噪点并增强图像质量。应用斑点技术,并将所有连接的像素计为单个斑点。然后将这些斑点通过区域过滤器,该过滤器将除去面积非常大的斑点。然后将其余的斑点分为小,中和大三类。再次将中大块斑点逐一送入预处理模式,以消除强边界效应并提取确切的可疑候选位置。然后,所有斑点都通过过滤器的形态紧凑树,该树通过不同的方法去除非分泌物区域。对于每个图像,需要不同的过滤器阈值集。在我们的技术中,我们是手动设置它,但是需要进一步研究以找出最佳阈值,或者需要一种可以为这些滤波器计算自适应阈值的技术。这是一种非常简单的渗出液检测方法,因为它仅使用形态学过滤树。在此实验中分析了尺寸为500 * 752的10张图像。将结果与眼科医生手工绘制的地面真相进行了比较。获得了78%的平均召回率和56%的平均精确度。

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