论文标题

图腾:用于验证视觉完整性的物理对象

Totems: Physical Objects for Verifying Visual Integrity

论文作者

Ma, Jingwei, Chai, Lucy, Huh, Minyoung, Wang, Tongzhou, Lim, Ser-Nam, Isola, Phillip, Torralba, Antonio

论文摘要

我们介绍了一种新的图像取证方法:将物理折射物(我们称为图腾)放入场景中,以保护该场景拍摄的任何照片。图腾弯曲并重定向光线,因此在单个图像中提供了多个(尽管扭曲)的多个(尽管扭曲)。防守者可以使用这些扭曲的图腾像素来检测是否已操纵图像。我们的方法通过估计场景中的位置并使用其已知的几何和材料特性来估算其位置,从而使光线穿过图腾的光线无障碍。为了验证图腾保护的图像,我们从图腾视点重建的场景与场景的外观从相机的角度进行了发现。这种方法使对抗性操纵任务更加困难,因为对手必须以几何一致的方式对图腾和图像像素进行修改,而又不知道图腾的物理特性。与先前的基于学习的方法不同,我们的方法不需要在特定操作的数据集上进行培训,而是使用场景和相机的物理属性来解决取证问题。

We introduce a new approach to image forensics: placing physical refractive objects, which we call totems, into a scene so as to protect any photograph taken of that scene. Totems bend and redirect light rays, thus providing multiple, albeit distorted, views of the scene within a single image. A defender can use these distorted totem pixels to detect if an image has been manipulated. Our approach unscrambles the light rays passing through the totems by estimating their positions in the scene and using their known geometric and material properties. To verify a totem-protected image, we detect inconsistencies between the scene reconstructed from totem viewpoints and the scene's appearance from the camera viewpoint. Such an approach makes the adversarial manipulation task more difficult, as the adversary must modify both the totem and image pixels in a geometrically consistent manner without knowing the physical properties of the totem. Unlike prior learning-based approaches, our method does not require training on datasets of specific manipulations, and instead uses physical properties of the scene and camera to solve the forensics problem.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源