Overview and Analysis of Present-Day Diabetic Retinopathy (DR) Detection Techniques

Smita Das, Swanirbhar Majumder
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引用次数: 2

Abstract

Diabetic retinopathy (DR) detection techniques is a biometric modality that deserves systematic review and analysis of the connected algorithms for further improvement. The ophthalmologist uses retinal fundus images for the early detection of DR by segmenting the images. There are several segmentation algorithms reported as earlier. This chapter presents a comprehensive review of the methodology associated with retinal blood vessel extraction presented to date. The vessel segmentation techniques are divided into four main categories depending on their underlying methodology as pattern recognition, vessel tracking, model based, and hybrid approaches. A few of these methods are further classified into subsections. Finally, a comparative analysis of a few of the DR detection techniques will be presented here based on their merits, demerits, and other parameters like sensitivity, specificity, and accuracy and provide detailed information about its significance, present status, limitations, and future scope.
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当前糖尿病视网膜病变(DR)检测技术综述与分析
糖尿病视网膜病变(DR)检测技术是一种生物识别技术,值得系统回顾和分析相关算法以进一步改进。眼科医生使用视网膜眼底图像,通过分割图像来早期检测DR。如前所述,有几种分割算法。本章介绍了与视网膜血管提取相关的方法的全面回顾。船舶分割技术根据其基本方法分为四大类:模式识别、船舶跟踪、基于模型和混合方法。这些方法中的一些被进一步划分为小节。最后,本文将根据几种DR检测技术的优点、缺点和其他参数(如灵敏度、特异性和准确性)进行比较分析,并提供其重要性、现状、局限性和未来范围的详细信息。
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