眼底图像自动定位黄斑的有效成像技术

Ashish Issac, Namita Sengar, Anushikha Singh, M. Dutta, J. Prinosil, K. Říha
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引用次数: 3

摘要

眼底图像中黄斑的定位对于设计视网膜疾病自动筛查工具具有重要意义。在眼底图像中,红色病变的颜色和质地相似,这是准确定位黄斑的瓶颈。本文提出了一种从低对比度和糖尿病视网膜病变眼底图像中自动、高效定位黄斑的计算机视觉算法。利用视盘的几何特征设计了一种基于统计的眼底图像区域黄斑检测模型。对200张正常/病变眼底图像进行了黄斑检测,结果显著。计算效率和对黄斑的精确定位使得所提出的方法足以作为视网膜疾病检测的自动筛选工具的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient imaging technique for automated macula localization from fundus images
Localization of macula from fundus image plays an important role to design an automated screening tool for detection of retinal diseases. The similar color and texture of red lesions act as a bottleneck in accurate localization of macula in the fundus image. This paper presents a computer vision algorithm for automated and efficient localization of macula from low contrast and diabetic retinopathy affected fundus images. A statistical based model is used to detect macula in a specified region of fundus image which is designed using the geometric features of optic disc. The performance of the proposed algorithm of macula detection was tested on 200 normal/affected fundus images and results are significant. The computational efficiency and accurate localization of macula makes the proposed method competent enough to be used as a part of an automated screening tool for detection of retinal diseases.
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