Exploring complementary features for iris recognition on mobile devices

Qi Zhang, Haiqing Li, Zhenan Sun, Zhaofeng He, T. Tan
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引用次数: 21

Abstract

Iris recognition on mobile devices is challenging due to a large number of low-quality iris images acquired in complex imaging conditions. Illumination variations, low resolution and serious noises reduce the distinctiveness of iris texture. This paper explores complementary features to improve the accuracy of iris recognition on mobile devices. Firstly, optimized ordinal measures (OMs) features are extracted to encode local iris texture. Afterwards, pairwise features are automatically learned to measure the correlation between two irises using the convolutional neural network (CNN). Finally, the selected OMs features and the learned pairwise features are fused at the score level. Experiments are performed on a newly constructed mobile iris database which contains 6000 images of 200 Asian subjects. Their iris images of left and right eyes are obtained simultaneously at varying standoff distances. Experimental results demonstrate OMs features and pairwise features are highly complementary and effective for iris recognition on mobile devices.
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探索虹膜识别在移动设备上的互补功能
由于在复杂的成像条件下获得大量低质量的虹膜图像,移动设备上的虹膜识别具有挑战性。光照变化、低分辨率和严重的噪声降低了虹膜纹理的显著性。本文探讨了互补特征,以提高移动设备上虹膜识别的准确性。首先,提取优化的有序测度特征,对局部虹膜纹理进行编码;然后,使用卷积神经网络(CNN)自动学习成对特征来测量两个虹膜之间的相关性。最后,将选择的OMs特征和学习到的成对特征在分数水平上融合。实验在一个新建立的移动虹膜数据库上进行,该数据库包含200个亚洲受试者的6000张图像。他们的左右眼虹膜图像在不同的距离同时获得。实验结果表明,OMs特征和成对特征在移动设备虹膜识别中具有很强的互补性和有效性。
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