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A robust non-vascular retina recognition system using structural features of retinal image

机译:利用视网膜图像结构特征的强大的非血管视网膜识别系统

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Biometric technology improves the accuracy of the person's identification system instead of the conventional identification technologies such as use of passwords, PIN, token etc. Biometric technologies are automated authentication methods, which identifies person's identity based upon his specific physiological or behavioral traits. Among all biometric systems such as iris, hand vein, finger prints, face, hand geometry, voice, gait, signature etc., human retina provides the most reliable and almost impossible to forge biometric trait. Most of the previous work carried out on retina recognition involves vessel based matching by using feature points i.e. minutiae points. Vessel segmentation and minutiae point extraction is a time consuming process. This motivates us to perform retina recognition matching without using minutiae points. This paper presents a simple and fast non-vascularbased retina recognition system. It computes similarity measure using novel features based upon structural information of an image. It extracts illuminance, contrast and structural features from a color retina image and combines these extracted attributes using an empirically optimized function to generate a similarity score between two candidate images. Finally matching decision is obtained on the basis of highest score value. The proposed system is tested on two retinal image databases collected from local source i.e. RIDB and AFIO. The local databasesare also made available online for other researchers. Efficiency of the proposed system is tested by the computation of false rejection rate (FRR) and false acceptance rate (FAR) and experimental results prove the validity of the proposed system. The method achieves an average identification rate of 92.50% on both databases.
机译:生物识别技术代替了诸如密码,PIN,令牌等的传统识别技术,提高了人们识别系统的准确性。生物识别技术是一种自动身份验证方法,可以根据其特定的生理或行为特征来识别其身份。在所有生物特征识别系统中,例如虹膜,手静脉,指纹,面部,手部几何形状,声音,步态,签名等,人类视网膜提供了最可靠且几乎不可能伪造的生物特征。先前在视网膜识别上进行的大多数工作都涉及通过使用特征点即细节点来进行基于血管的匹配。船只分割和细节点提取是一个耗时的过程。这激励我们在不使用细节点的情况下执行视网膜识别匹配。本文提出了一种简单,快速的非基于血管的视网膜识别系统。它基于图像的结构信息使用新颖特征来计算相似性度量。它从彩色视网膜图像中提取照度,对比度和结构特征,并使用经过经验优化的功能组合这些提取的属性,以生成两个候选图像之间的相似度得分。基于最高得分值最终获得匹配决策。在从本地来源即RIDB和AFIO收集的两个视网膜图像数据库上测试了拟议的系统。本地数据库也可以在线提供给其他研究人员。通过计算错误拒绝率(FRR)和错误接受率(FAR)来测试所提出系统的效率,实验结果证明了所提出系统的有效性。该方法在两个数据库上均达到92.50%的平均识别率。

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