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Sparse representation for optic disk detection

机译:光盘检测的稀疏表示

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摘要

Automatic detection of optic disc (OD) is a crucial step in automated eye image processing. In this paper we present a novel method that utilizes the fact that ODs exhibit similar characteristics like circular shape and serves as the region where blood vessels and nerves converge. A dictionary with training patterns, built out of sub-images, with OD at the center, is utilized. For a given test image, the method examines all subimages of the pre-determined size, and expresses them as linear combinations of basis images in the dictionary, minimizing l1-norm of the solution. The underlying assumption is that all sub-images with OD at the center, lie on a single sub-space. The proposed method was evaluated on the publicly-available database DIARETDB1 and DRIVE, with disjoint dictionary and testing images. Of the 89 images, the OD-center was detected within 2% of normalized error in 88 images. On DRIVE images we obtain accuracy of 85%.
机译:光盘(OD)的自动检测是自动眼睛图像处理中的关键步骤。在本文中,我们提出了一种新颖的方法,利用了OD表现出类似圆形等类似特征并充当血管和神经会聚区域的事实。使用具有训练模式的字典,该训练模式由子图像构建而成,以OD为中心。对于给定的测试图像,该方法检查预定大小的所有子图像,并将它们表示为字典中基础图像的线性组合,从而使解决方案的l1-范数最小。基本假设是,所有以OD为中心的子图像都位于单个子空间上。在公开数据库DIARETDB1和DRIVE上对提出的方法进行了评估,字典和测试图像互不相交。在这89张图像中,检测到OD中心在88张图像的归一化误差的2%以内。在DRIVE图像上,我们获得85%的精度。

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