通过在视网膜图像中刻痕定量来自动检测疾病

K. Parasuraman, R. Ramya
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引用次数: 2

摘要

数字视网膜成像使用高分辨率成像系统来拍摄眼睛内部的照片。这有助于医生进入视网膜,帮助他们检测和管理青光眼、糖尿病和黄斑变性等健康状况。心血管疾病的风险可以通过测量视网膜血管来确定。错误的血管识别可能导致错误的诊断结果。视网膜图像提供了一种很好的诊断方法来了解人体内正在发生的事情。通过分析人体视网膜图像,可以识别人体的心血管状况。为了克服这一点,我们正在使用以下建议的方法。本文提出了一种收集视网膜图像中存在的所有血管信息并识别视网膜图像中真实血管的新技术。该方法首先对输入图像进行选择,对血管进行分割;在此基础上,采用交叉点检测方法,利用相邻像素的窗口来检测相互交叉的血管。然后,通过应用图形示踪方法识别血管,并以后续血管测量的形式表示它们。然后,识别静脉和动脉,并通过测量动静脉交叉计算宽度。因此,通过将我们提出的方法与各种视网膜图像进行比较,可以识别疾病并计算性能。
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Automated detection of diseases by nicking quantification in retinal images
Digital retinal imaging uses high-resolution imaging systems to take pictures of the inside of your eye. This helps the doctors to access the retina and helps them to detect and manage health conditions like glaucoma, diabetes and macular degeneration. The risk of cardio vascular diseases can be identified by measuring the retinal blood vessel. The identification of the wrong blood vessel may lead to a wrong diagnosis result. A retinal image provides a good diagnostic approach of what is happening inside the human body. By analyzing the humans retinal image one can able to identify cardio vascular condition of the body. To overcome that we are using the following proposed method. This paper proposes a novel technique that collects information about all blood vessels that present in the retinal image and identifies the true vessel in a retinal image. In the proposed method, first the input image is choose and the blood vessels are segmented. From that the crossover point detection is applied to detect the vessels which are crossing each other by using the window with the neighboring pixels. Then, by applying the graph tracer method the vessels are identified and represented them in the form of subsequent vessel measurements. Then, the venular and the artery are identified and the width is calculated by measuring the arterio-venous crossings. Thus, from this the diseases is identified and the performance is calculated by comparing our proposed method with various retinal images.
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