DepthFake:用2D照片欺骗3D人脸认证

Zhihao Wu, Yushi Cheng, Jiahui Yang, Xiaoyu Ji, Wenyuan Xu
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引用次数: 1

摘要

人脸认证已广泛应用于访问控制中,最新的3D人脸认证系统采用3D活体检测技术来应对照片重放攻击,即攻击者使用2D照片绕过认证。在本文中,我们分析了利用结构光深度相机的三维活体检测系统的安全性,并发现了一个针对三维人脸认证系统的新的攻击面。我们提出DepthFake攻击,可以欺骗3D面部认证仅使用一张2D照片。为了实现这一目标,DepthFake首先从目标受害者的2D照片中估计其面部的3D深度信息。然后,DepthFake将嵌入人脸深度信息的精心制作的散射模式投影出来,以使2D照片具有3D身份验证属性。我们克服了一系列实际挑战,例如,2D照片的深度估计误差,基于结构光的深度图像伪造,人脸的RGB图像和深度图像的对齐,并在实验室设置中实现了DepthFake。我们在3个商用人脸认证系统(腾讯云、百度云、3DiVi)和一个商用门禁设备上验证了DepthFake。超过50个用户的结果表明,在真实世界中,DepthFake的整体深度攻击成功率为79.4%,RGB-D攻击成功率为59.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DepthFake: Spoofing 3D Face Authentication with a 2D Photo
Face authentication has been widely used in access control, and the latest 3D face authentication systems employ 3D liveness detection techniques to cope with the photo replay attacks, whereby an attacker uses a 2D photo to bypass the authentication. In this paper, we analyze the security of 3D liveness detection systems that utilize structured light depth cameras and discover a new attack surface against 3D face authentication systems. We propose DepthFake attacks that can spoof a 3D face authentication using only one single 2D photo. To achieve this goal, DepthFake first estimates the 3D depth information of a target victim’s face from his 2D photo. Then, DepthFake projects the carefully-crafted scatter patterns embedded with the face depth information, in order to empower the 2D photo with 3D authentication properties. We overcome a collection of practical challenges, e.g., depth estimation errors from 2D photos, depth images forgery based on structured light, the alignment of the RGB image and depth images for a face, and implemented DepthFake in laboratory setups. We validated DepthFake on 3 commercial face authentication systems (i.e., Tencent Cloud, Baidu Cloud, and 3DiVi) and one commercial access control device. The results over 50 users demonstrate that DepthFake achieves an overall Depth attack success rate of 79.4% and RGB-D attack success rate of 59.4% in the real world.
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