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CNNs Under Attack: On the Vulnerability of Deep Neural Networks Based Face Recognition to Image Morphing

机译:攻击中的CNN:基于深度神经网络的脆弱性对图像变形的脆弱性

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Facial recognition has become a critical constituent of common automatic border control gates. Despite many advances in recent years, face recognition systems remain susceptible to an ever evolving diversity of spoofing attacks. It has recently been shown that high-quality face morphing or splicing can be employed to deceive facial recognition systems in a border control scenario. Moreover, facial morphs can easily be produced by means of open source software and with minimal technical knowledge. The purpose of this work is to quantify the severeness of the problem using a large dataset of morphed face images. We employ a state-of-the-art face recognition algorithm based on deep convolutional neural networks and measure its performance on a dataset of 7260 high-quality facial morphs with varying blending factor. Using the Inception-ResNet-v1 architecture we train a deep neural model on 4 million images to obtain a validation rate of 99.96% at 0.04% false acceptance rate (FAR) on the original, unmodified images. The same model fails to repel 1.13% of all morphing attacks, accepting both the impostor and the document owner. Based on these results, we discuss the observed weaknesses and possible remedies.
机译:面部识别已成为普通自动边界控制盖茨的关键组成部分。尽管近年来,尽管有许多进展,但面部识别系统仍然易于不断变化的欺骗攻击多样性。最近已经表明,高质量的面部变形或拼接可以用于在边界控制场景中欺骗面部识别系统。此外,可以通过开源软件和最少的技术知识轻松生产面部变形。这项工作的目的是使用大型人物图像的大型数据集来量化问题的严重性。我们采用了基于深度卷积神经网络的最先进的人脸识别算法,并测量其在具有不同混合因子的7260高质量面部变形的数据集中的性能。使用Inception-Resnet-V1架构我们在400万图像上培训深度神经模式,以获得原始未修改的图像的0.04%的假验收率(远)验证率为99.96%。相同的模型无法排斥1.13%的所有变形攻击,接受冒名顶替者和文档所有者。根据这些结果,我们讨论了观察到的弱点和可能的补救措施。

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