论文标题

深度卷积神经网络,用于面部和虹膜演示攻击检测:调查和案例研究

Deep convolutional neural networks for face and iris presentation attack detection: Survey and case study

论文作者

El-Din, Yomna Safaa, Moustafa, Mohamed N., Mahdi, Hani

论文摘要

生物识别表现攻击检测正在增加注意力。移动设备的用户发现,用手指,面部或虹膜识别而不是密码解锁其智能应用程序更加方便。在本文中,我们调查了最近文献中提出的方法,以检测面部和虹膜表现攻击。具体而言,我们调查了微调非常深的卷积神经网络对面部和虹膜抗体的任务的有效性。我们比较了六个公开可用的基准数据集上的两种不同的微调方法。结果表明,这些深层模型在学习判别特征中的有效性,这些特征可以与错误率非常低的伪造生物识别图像分开。面垫上的跨数据库评估显示出比最新技术更好的概括。我们还以相同的错误率在虹膜垫数据集上进行了跨数据库测试,这在以前的文献中没有报道过。此外,我们建议使用一个训练有素的单个深网,以检测面部和虹膜攻击。与仅针对一种生物识别训练的网络相比,我们没有注意到准确性降解。最后,我们通过网络分析了与图像频率组件相关的学习功能,以证明其预测决策是合理的。

Biometric presentation attack detection is gaining increasing attention. Users of mobile devices find it more convenient to unlock their smart applications with finger, face or iris recognition instead of passwords. In this paper, we survey the approaches presented in the recent literature to detect face and iris presentation attacks. Specifically, we investigate the effectiveness of fine tuning very deep convolutional neural networks to the task of face and iris antispoofing. We compare two different fine tuning approaches on six publicly available benchmark datasets. Results show the effectiveness of these deep models in learning discriminative features that can tell apart real from fake biometric images with very low error rate. Cross-dataset evaluation on face PAD showed better generalization than state of the art. We also performed cross-dataset testing on iris PAD datasets in terms of equal error rate which was not reported in literature before. Additionally, we propose the use of a single deep network trained to detect both face and iris attacks. We have not noticed accuracy degradation compared to networks trained for only one biometric separately. Finally, we analyzed the learned features by the network, in correlation with the image frequency components, to justify its prediction decision.

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