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Deep Learning-Based Enhanced Presentation Attack Detection for Iris Recognition by Combining Features from Local and Global Regions Based on NIR Camera Sensor

机译:基于深度学习的增强介绍展示攻击检测,从基于NIR相机传感器结合本地和全球区域的特征来识别虹膜识别

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摘要

Iris recognition systems have been used in high-security-level applications because of their high recognition rate and the distinctiveness of iris patterns. However, as reported by recent studies, an iris recognition system can be fooled by the use of artificial iris patterns and lead to a reduction in its security level. The accuracies of previous presentation attack detection research are limited because they used only features extracted from global iris region image. To overcome this problem, we propose a new presentation attack detection method for iris recognition by combining features extracted from both local and global iris regions, using convolutional neural networks and support vector machines based on a near-infrared (NIR) light camera sensor. The detection results using each kind of image features are fused, based on two fusion methods of feature level and score level to enhance the detection ability of each kind of image features. Through extensive experiments using two popular public datasets (LivDet-Iris-2017 Warsaw and Notre Dame Contact Lens Detection 2015) and their fusion, we validate the efficiency of our proposed method by providing smaller detection errors than those produced by previous studies.
机译:虹膜识别系统在高安全级别的应用程序被使用,因为它们的高识别率和虹膜图案的独特性。然而,正如最近的研究报告,虹膜识别系统可以通过使用人造虹膜图案,并导致其安全水平降低上当。前面的介绍中攻击检测研究的准确度,因为他们只使用来自全球虹膜区域图像提取的特征是有限的。为了克服这个问题,我们通过使用基于近红外(NIR)卷积神经网络和支持向量机光相机传感器结合本地及全球虹膜区域提取的特征,提出虹膜识别新的演示文稿的攻击检测方法。使用各种图像特征的检测结果被融合的基础上,功能水平和成绩水平,提升各种图像特征的检测能力的两个融合方法。通过使用两个流行的公共数据集大量的实验(LivDet光圈-2017华沙和巴黎圣母院隐形眼镜检测2015年)和他们的融合,我们通过提供比以前的研究产生较小的检测误差验证了我们提出的方法的有效性。

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