Automated Exudates Detection in Retinal Fundus Image Using Morphological Operator and Entropy Maximization Thresholding

G. Kom, B. C. Wouantsa Tindo, J. R. M. Pone, A. Tiedeu
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引用次数: 1

Abstract

Blindness which is considered as degrading disabling disease is the final stage that occurs when a certain threshold of visual acuity is overlapped. It happens with vision deficiencies that are pathologic states due to many ocular diseases. Among them, diabetic retinopathy is nowadays a chronic disease that attacks most of diabetic patients. Early detection through automatic screening programs reduces considerably expansion of the disease. Exudates are one of the earliest signs. This paper presents an automated method for exudates detection in digital retinal fundus image. The first step consists of image enhancement. It focuses on histogram expansion and median filter. The difference between filtered image and his inverse reduces noise and removes background while preserving features and patterns related to the exudates. The second step refers to blood vessel removal by using morphological operators. In the last step, we compute the result image with an algorithm based on Entropy Maximization Thresholding to obtain two segmented regions (optical disk and exudates) which were highlighted in the second step. Finally, according to size criteria, we eliminate the other regions obtain the regions of interest related to exudates. Evaluations were done with retinal fundus image DIARETDB1 database. DIARETDB1 gathers high-quality medical images which have been verified by experts. It consists of around 89 colour fundus images of which 84 contain at least mild non-proliferative signs of the diabetic retinopathy. This tool provides a unified framework for benchmarking the methods, but also points out clear deficiencies in the current practice in the method development. Comparing to other recent methods available in literature, we found that the proposed algorithm accomplished better result in terms of sensibility (94.27%) and specificity (97.63%).
基于形态学算子和熵最大化阈值的眼底图像渗出物自动检测
失明被认为是一种退化性致残性疾病,是当某一视力阈值重叠时发生的最后阶段。它发生在视力缺陷,这是由于许多眼部疾病引起的病理状态。其中,糖尿病视网膜病变是目前大多数糖尿病患者的慢性病。通过自动筛查程序的早期检测大大减少了疾病的扩大。渗出物是最早的迹象之一。本文提出了一种在数字视网膜眼底图像中自动检测渗出物的方法。第一步包括图像增强。它侧重于直方图展开和中值滤波。滤波图像和他的逆图像之间的差异减少了噪声并去除了背景,同时保留了与渗出物相关的特征和模式。第二步是指使用形态学算子去除血管。在最后一步中,我们使用基于熵最大化阈值的算法计算结果图像,以获得在第二步中突出显示的两个分割区域(光盘和渗出物)。最后,根据大小标准,我们剔除其他区域,获得与渗出物相关的感兴趣区域。使用视网膜眼底图像DIARETDB1数据库进行评估。DIARETDB1收集经过专家验证的高质量医学图像。它由大约89张彩色眼底图像组成,其中84张至少包含糖尿病视网膜病变的轻度非增殖性体征。该工具为基准测试方法提供了一个统一的框架,但也指出了当前方法开发实践中的明显不足。与文献中现有的其他方法相比,我们发现所提出的算法在敏感性(94.27%)和特异性(97.63%)方面取得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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