Junxing Hu, Leyuan Wang, Zhengquan Luo, Yunlong Wang, Zhenan Sun
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引用次数: 3
Abstract
Since the outbreak of the COVID-19 pandemic, iris recognition has been used increasingly as contactless and unaffected by face masks. Although less user cooperation is an urgent demand for existing systems, corresponding manually annotated databases could hardly be obtained. This paper presents a large-scale database of near-infrared iris images named CASIA-Iris-Degradation Version 1.0 (DV1), which consists of 15 subsets of various degraded images, simulating less cooperative situations such as illumination, off-angle, occlusion, and nonideal eye state. A lot of open-source segmentation and recognition methods are compared comprehensively on the DV1 using multiple evaluations, and the best among them are exploited to conduct ablation studies on each subset. Experimental results show that even the best deep learning frameworks are not robust enough on the database, and further improvements are recommended for challenging factors such as half-open eyes, off-angle, and pupil dilation. Therefore, we publish the DV1 with manual annotations online to promote iris recognition. (http://www.cripacsir.cn/dataset/)
自2019冠状病毒病大流行爆发以来,虹膜识别越来越多地用于非接触式和不受口罩影响的识别。虽然现有系统迫切需要用户较少的合作,但很难获得相应的人工标注数据库。本文建立了大型近红外虹膜图像数据库CASIA-Iris-Degradation Version 1.0 (DV1),该数据库由15个不同退化图像子集组成,模拟了光照、失角、遮挡、非理想眼态等合作程度较低的情况。对众多开源的DV1分割和识别方法进行了综合比较,采用多重评价,并利用其中最优的方法对每个子集进行消融研究。实验结果表明,即使是最好的深度学习框架在数据库上的鲁棒性也不够,对于半睁眼、偏离角度和瞳孔扩张等具有挑战性的因素,建议进一步改进。因此,我们在网上发布了带有手动注释的DV1,以促进虹膜识别。(http://www.cripacsir.cn/dataset/)