3D face recognition systems have been widely employed in intelligent terminals, among which structured light imaging is a common method to measure the 3D shape. However, this method could be easily attacked, leading to inaccurate 3D face recognition. In this paper, we propose a novel, physically-achievable attack on the fringe structured light system, named structured light attack. The attack utilizes a projector to project optical adversarial fringes on faces to generate point clouds with well-designed noises. We firstly propose a 3D transform-invariant loss function to enhance the robustness of 3D adversarial examples in the physical-world attack. Then we reverse the 3D adversarial examples to the projector's input to place noises on phase-shift images, which models the process of structured light imaging. A real-world structured light system is constructed for the attack and several state-of-the-art 3D face recognition neural networks are tested. Experiments show that our method can attack the physical system successfully and only needs minor modifications of projected images.
翻译:3D 面部识别系统被广泛用于智能终端, 其中结构化光成像是测量 3D 形状的常见方法。 但是, 这种方法很容易被攻击, 导致不准确的 3D 面部识别。 在本文中, 我们提议对边缘结构化光系统进行新型、 物理上可实现的攻击, 命名为结构化光攻击 。 攻击使用投影机在脸上投射光对抗边缘以产生设计完善的噪音的点云。 我们首先提议3D 变异性损失功能, 以增强 3D 物理世界攻击中3D 对抗性实例的坚固性 。 然后我们将3D 对抗性实例转换为投影器输入, 将噪音放置在轮式图像上, 即结构化光成过程的模型 。 一个真实世界结构化的光系统是为攻击而构建的, 几个最先进的 3D 面部识别神经网络被测试 。 实验显示, 我们的方法可以成功攻击物理系统, 只需要对预测图像稍作些修改 。