利用视网膜血管特征进行身份认证的生物识别安全应用

Md. Akter Hussain, A. Bhuiyan, A. Mian, K. Ramamohanarao
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引用次数: 10

摘要

视网膜血管分支和交叉点是每个个体的独特特征,可作为可靠的生物特征进行个人身份验证,并可用于信息检索和安全应用。本文提出了一种基于视网膜血管网络特征的生物识别认证方案。我们采用了一种自动检测和识别视网膜血管分支和交叉点的技术。这些分支和交叉点是从图像中突出的血管映射出来的。为此,本文采用了一种新的血管宽度测量方法,对超过一定宽度的血管进行了选择。根据这些血管段,确定其相应的分支和交叉点。通过对检测到的分支点和交叉点进行几何哈希,构造不变特征。我们考虑为基对建模的交叉点和所有其他点一起用于哈希表条目中的位置。因此,模型不受旋转、平移和缩放的影响。对于每个人,系统都使用模型进行训练,以接受或拒绝声称的身份。初步结果表明,该方法的检测准确率达到100%,具有可靠的人物识别潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biometric Security Application for Person Authentication Using Retinal Vessel Feature
Retinal vascular branch and crossover points are unique features for each individual that can be used as a reliable biometric for personal authentication and can be used for information retrieval and security application. In this work, a novel biometric authentication scheme is proposed based on the retinal vascular network features. We apply an automatic technique to detect and identify retinal vascular branch and crossover points. These branch and crossover points are mapped from prominent blood vessels in the image. For this, a novel vessel width measurement method is applied and vessels more than certain widths are selected. Based on these vessel segments their corresponding branch and crossover points are identified. Invariant features are constructed through Geometric Hashing of the detected branch and crossover points. We consider the crossover points for modelling a basis pair and all other points together for locations in the hash table entries. Thus, the models are invariant to rotation, translation and scaling. For each person, the system is trained with the models to accept or reject a claimed identity. The initial results show that the proposed method has achieved 100% detection accuracy which is highly potential for reliable person identification.
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