Retina image assessment for microstructural difference detection

Andreea-Monica Dincă Lăzărescu, Simona Moldovanu, Luminita Moraru
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Abstract

The dissimilarities in appearance of the iris texture patters can improve the individual’s recognition and can strength the capabilities of multibiometrics systems. There is an important within-person variation or intraclass variation that produces different patters such as the geometry or iris pigmentation details that change over time or could be different when the right iris and left iris are analyzed. Moreover, the sensing environment such as ambient lighting variations, eye rotation due to the head tilt or inconsistent iris size due to the distance from the camera can also introduce within-person variation. In this paper, we apply the fuzzy edges detection, in a comparative fashion between right iris and left iris, to find the interoperability capability of a particular biometric trait determined primarily by genotype. In other words, we investigated the degree of variation of the irises of the same person. The structural similarity index measure (SSIM) is implemented to investigate the structural similarity between two iris codes. Prior to the similarity analysis, the segmented iris (i.e., annular area between pupil and sclera) is the edges detection based on the fuzzy edge is performed. This operation allows comparisons between the right iris and left iris without any influence of the stretch or dilation of the pupil induced by different illumination conditions. Also, we can estimate if the left and right irises belong to the same or to different individuals. The proposed approach is tested on the MMU1 Iris Database (with 225 images of the left eye and 225 images of the right eye). An average SSIM value of 0.9216, indicates that proposed iris biometrics model effectively differentiates between left and right eyes of the same person. Also, this result indicates that there is recognizable similarity between left and right irises. These results could be useful for certain applications devoted to detect anomalies in the human irises that could be associated to various diseases.
视网膜图像评估用于显微结构差异检测
虹膜纹理图案的外观差异可以提高个体的识别能力,增强多生物识别系统的能力。有一个重要的人内变异或类内变异,产生不同的模式,如几何形状或虹膜色素细节,随着时间的推移而变化,或者在分析右虹膜和左虹膜时可能会有所不同。此外,感知环境,如环境光线的变化,由于头部倾斜而引起的眼睛旋转或由于与相机的距离而导致的虹膜大小不一致,也会引起人体内的变化。在本文中,我们应用模糊边缘检测,以右虹膜和左虹膜之间的比较方式,找到主要由基因型决定的特定生物特征的互操作性。换句话说,我们调查了同一个人虹膜的变异程度。采用结构相似指数度量(SSIM)来研究两个虹膜码之间的结构相似度。在相似性分析之前,对分割的虹膜(即瞳孔和巩膜之间的环形区域)进行基于模糊边缘的边缘检测。这种操作可以比较左右虹膜,而不受不同光照条件下瞳孔拉伸或扩张的影响。此外,我们还可以估计左右虹膜是属于同一个体还是不同个体。在MMU1虹膜数据库(左眼225张,右眼225张)上对该方法进行了测试。平均SSIM值为0.9216,表明提出的虹膜生物识别模型能够有效区分同一人的左右眼。此外,该结果表明左右虹膜之间存在可识别的相似性。这些结果可能对某些专门用于检测可能与各种疾病相关的人类虹膜异常的应用程序有用。
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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