Improving Deep-Learning-based Face Recognition to Increase Robustness against Morphing Attacks

Una M. Kelly, L. Spreeuwers, R. Veldhuis
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引用次数: 1

Abstract

State-of-the-art face recognition systems (FRS) are vulnerable to morphing attacks, in which two photos of different people are merged in such a way that the resulting photo resembles both people. Such a photo could be used to apply for a passport, allowing both people to travel with the same identity document. Research has so far focussed on developing morphing detection methods. We suggest that it might instead be worthwhile to make face recognition systems themselves more robust to morphing attacks. We show that deep-learning-based face recognition can be improved simply by treating morphed images just like real images during training but also that, for significant improvements, more work is needed. Furthermore, we test the performance of our FRS on morphs of a type not seen during training. This addresses the problem of overfitting to the type of morphs used during training, which is often overlooked in current research.
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改进基于深度学习的人脸识别以提高对变形攻击的鲁棒性
最先进的人脸识别系统(FRS)很容易受到变形攻击,在这种攻击中,两张不同人的照片被合并在一起,结果照片看起来像两个人。这样的照片可以用来申请护照,允许两个人用相同的身份证件旅行。到目前为止,研究的重点是开发变形检测方法。我们建议,让人脸识别系统本身对变形攻击更强大,可能是值得的。我们表明,基于深度学习的人脸识别可以简单地通过在训练过程中像处理真实图像一样处理变形图像来改进,但要实现显著改进,还需要更多的工作。此外,我们测试了FRS对训练中未见过的类型的变形的性能。这解决了训练中使用的变形类型的过拟合问题,这在当前的研究中经常被忽视。
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