A fast template-based technique to extract optic disc from coloured fundus images based on histogram features

Baydaa Al-Hamadani
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引用次数: 2

Abstract

The process of localising and extracting optic disc (OD) from coloured fundus images is of much benefit to the process of diagnosing several eye diseases. This paper presents a fast and robust approach to extract OD by employing the histogram features of the input image and matching it with the histogram of a template image that has no pathological features. These steps result in an image with its own OD region and other pathological structures have more colour intensity than the original image. The proposed method locate part of the OD region first and then expands it to include all the required region based on morphological OD features such as location, area, and colour intensity. The testing results against 1540 fundus images taken from five public databases show that the proposed technique succeeded in extracting OD region from challenging images and it achieved 97.66%, 96.93%, 99.7% for sensitivity, specificity, and accuracy, respectively with a competitive average execution time equal to 2.5s.
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基于直方图特征的彩色眼底图像视盘快速模板提取技术
从彩色眼底图像中定位和提取视盘(OD)的过程对诊断几种眼病有很大的帮助。本文提出了一种快速而稳健的OD提取方法,该方法利用输入图像的直方图特征,并将其与没有病理特征的模板图像的直方图进行匹配。这些步骤导致图像具有自己的OD区域,并且其他病理结构比原始图像具有更多的颜色强度。所提出的方法首先定位OD区域的一部分,然后根据位置、面积和颜色强度等形态OD特征将其扩展到包括所有所需区域。对来自五个公共数据库的1540张眼底图像的测试结果表明,该技术成功地从具有挑战性的图像中提取了OD区域,其敏感性、特异性和准确性分别达到97.66%、96.93%和99.7%,竞争平均执行时间等于2.5s。
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