Optic disc and fovea detection via multi-scale matched filters and a vessels' directional matched filter

Bob Zhang, F. Karray
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引用次数: 16

Abstract

The optic disc (OD) and fovea are important anatomical features in retinal images. Its detections are crucial for developing an automated screening program. This paper proposes a method to automatically detect the OD and fovea in fundus images in three stages: OD vessel candidate detection, OD vessel candidate matching, and fovea detection. The first stage is achieved with multi-scale Gaussian filtering, scale production, and double thresholding to initially extract the vessels' directional map. The map is then thinned before another threshold is applied to remove pixels with low intensities. This result forms the OD vessel candidates. In the second stage, a Vessels' Directional Matched Filter (VDMF) of various dimensions is applied to the candidates to be matched, and the pixel with the smallest difference designated the OD center. Finally, the fovea is detected as the pixel with lowest intensity in a window either to the left or right of the OD center. We tested the proposed method on a subset of a new database consisting of 139 images from a diabetic retinopathy (DR) screening programme. The OD center and fovea were successfully detected with accuracies of 96.4% (134/139) and 98.1% (105/107) respectively.
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通过多尺度匹配滤波器和血管方向匹配滤波器检测视盘和中央凹
视盘和中央窝是视网膜图像中重要的解剖特征。它的检测对于开发自动筛选程序至关重要。本文提出了一种眼底图像中OD和中央凹的自动检测方法,分为OD血管候选检测、OD血管候选匹配和中央凹检测三个阶段。第一阶段通过多尺度高斯滤波、尺度生成和双阈值化来初步提取血管的方向图。然后,在应用另一个阈值以去除低强度像素之前,对地图进行稀释。这一结果形成了OD候选血管。第二阶段,对待匹配候选点进行不同维度的舰船方向匹配滤波(VDMF),并以差值最小的像素点作为OD中心;最后,中央凹被检测为在外径中心左侧或右侧的窗口中强度最低的像素。我们在一个由139张来自糖尿病视网膜病变(DR)筛查项目的图像组成的新数据库的子集上测试了所提出的方法。检测外径中心和中央凹的准确率分别为96.4%(134/139)和98.1%(105/107)。
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