虹膜与巩膜描述符匹配分数融合的虹膜识别

Mrunal K. Pathak, V. Bairagi, N. Srinivasu, Bhavana V. Chavan
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引用次数: 3

摘要

最近最流行的生物识别系统是基于独特的巩膜和虹膜模式的识别和分类。独特的血管模式探讨了巩膜识别对人的识别的兴趣。然而,不同凝视方向、远距离图像和运动图像等条件下的放松眼图像的巩膜分割问题被广泛研究。虹膜的缺点是离角成像,虹膜的位置和离角成像的中心影响巩膜分割的精度。巩膜分割和虹膜识别的另一个挑战是高分辨率和暗图像,这导致了移动应用的消耗过程。因此,我们提出了虹膜与巩膜融合的新方法。该系统将巩膜和虹膜描述符值融合在一起,实现了可靠、准确的虹膜识别系统。该方法将利用虹膜和巩膜描述子值测试不同融合模型下虹膜识别系统的执行情况,以确保虹膜识别在宽松成像条件下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Match score level fusion of iris and sclera descriptor for iris recognition
Most recently popular biometrie systems are based on recognition and classification of unique sclera and iris patterns. Unique pattern of blood veins explore the interest in sclera recognition for person identification. However sclera segmentation of relaxed eye images in condition such as different stare direction, at-a-distance image and on-the-move image widely enquired. The drawback of iris is off angle imaging where position of iris and center for off angle imagining affect the performance of sclera segmentation in terms of accuracy. Another challenge in sclera segmentation and iris recognition is high resolution and dark images which causes draining process for mobile application. So we proposed a new method which is the fusion of both iris and sclera. In proposed system sclera and iris descriptor value are fuse together for reliable and accurate iris recognition system. The proposed method will test the execution of iris recognition system for different fusion model using iris and sclera descriptor values to ensure the performance of iris recognition for a relaxed imaging.
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