基于分水岭变换的视网膜血管分割生物特征识别算法

Hichem Betaouaf, A. Bessaid
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引用次数: 8

摘要

生物识别系统建立了个体特定生理或行为特征的真实性。在本文中,我们评估了一种基于眼底图像的视网膜识别算法,该算法主要基于视网膜血管网络,这是最可靠的生物特征识别的特征。为了提取特征,血管网络的分割使用强大的形态学技术称为分水岭。这种技术可以忠实地提取血管骨架,最终用于检测网络的生物特征属性,如分叉点和交叉分支。最后,我们的算法根据这些特征进行模型比较。我们在视网膜图像数据库ARIA上测试我们的算法。对实验结果进行了解释,并确定了图像之间对应关系的判定阈值。为了进行评价,在图像上测试得到的分类系统;然后估计其敏感性和特异性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A biometric identification algorithm based on retinal blood vessels segmentation using watershed transformation
A biometric system establishes an authenticity of a specific physiological or behavioral trait of an individual. In this paper, we evaluate a retinal identification algorithm based on fundus images mainly on retinal vascular network that is a characteristic of the most reliable biometric identification. In order to extract the features, a segmentation of the vascular network is performed using a powerful morphological technique called watershed. This technique allows extracting, faithfully, the vascular skeleton that will eventually be used for detecting biometric attributes of the network such as bifurcation points and crossing branches. Finally, our algorithm performs model comparison made based on these characteristics. We test our algorithm on a retinal images database ARIA. The experimental results are interpreted and a decision threshold of the correspondence between the images is determined. For evaluating, the resulting classification system is tested on the images; its sensitivity and specificity are then estimated.
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