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Predicting iris vulnerability to direct attacks based on quality related features

机译:根据质量相关特征预测虹膜对直接攻击的脆弱性

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A new vulnerability prediction scheme for direct attacks to iris recognition systems is presented. The objective of the novel technique, based on a 22 quality related parameterization, is to discriminate beforehand between real samples which are easy to spoof and those more resistant to this type of threat. The system is tested on a database comprising over 1,600 real and fake iris images proving to have a high discriminative power reaching an overall rate of 84% correctly classified real samples for the dataset considered. Furthermore, the detection method presented has the added advantage of needing just one iris image (the same used for verification) to decide its degree of robustness against spoofing attacks.
机译:提出了一种直接攻击虹膜识别系统的新的漏洞预测方案。基于22个与质量相关的参数化,该新技术的目标是预先区分易于欺骗的真实样本和对这种威胁更具抵抗力的真实样本。该系统在包含1,600多个真实和伪造虹膜图像的数据库上进行了测试,事实证明,这些图像具有很高的判别力,对于所考虑的数据集而言,正确分类的真实样本的总体识别率达到84%。此外,提出的检测方法还具有一个优点,即仅需要一个虹膜图像(用于验证的图像)即可确定其抵御欺骗攻击的鲁棒程度。

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