Automated detection of bright lesions from contrast normalized fundus images

Ashish Issac, Rishabh Madan, M. Dutta, C. Travieso-González
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引用次数: 0

Abstract

Exudates are one of the abnormalities present in the eye which can lead to vision loss. Fundus images may consist of artifacts which occur during image acquisition and hamper the accuracy of detection of exudates. There is a need to develop an image processing based techniques for automated and correct segmentation of exudates from fundus images. This paper demonstrates an automatic computer vision algorithm for efficient identification of the exudates from fundus images by strategic fusion of techniques i.e. contrast normalization, top-hat transformation and average filtering. The proposed technique correctly detects exudates from the fundus images and rejects the artifacts and reflections. The average computation time for exudates segmentation from fundus images is 11 seconds. The proposed method is computationally efficient and robust and can be used for real time applications.
从对比度归一化眼底图像中自动检测明亮病变
渗出物是眼睛中存在的一种异常现象,可导致视力丧失。眼底图像可能由图像采集过程中出现的伪影组成,妨碍了渗出物检测的准确性。有必要开发一种基于图像处理的技术来自动和正确地分割眼底图像中的渗出物。本文通过对比归一化、顶帽变换和平均滤波技术的策略融合,提出了一种有效识别眼底图像渗出物的计算机视觉算法。该方法能准确地检测眼底图像中的渗出物,并能抑制伪影和反射。眼底图像中渗出物分割的平均计算时间为11秒。该方法计算效率高,鲁棒性好,可用于实时应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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