Physical adversarial attacks in object detection have attracted increasing attention. However, most previous works focus on hiding the objects from the detector by generating an individual adversarial patch, which only covers the planar part of the vehicle's surface and fails to attack the detector in physical scenarios for multi-view, long-distance and partially occluded objects. To bridge the gap between digital attacks and physical attacks, we exploit the full 3D vehicle surface to propose a robust Full-coverage Camouflage Attack (FCA) to fool detectors. Specifically, we first try rendering the non-planar camouflage texture over the full vehicle surface. To mimic the real-world environment conditions, we then introduce a transformation function to transfer the rendered camouflaged vehicle into a photo-realistic scenario. Finally, we design an efficient loss function to optimize the camouflage texture. Experiments show that the full-coverage camouflage attack can not only outperform state-of-the-art methods under various test cases but also generalize to different environments, vehicles, and object detectors.
翻译:物体探测中的物理对抗性攻击引起了越来越多的注意。然而,以往大多数工作的重点是通过生成单个的对抗性补丁将物体从探测器中隐藏起来,该补丁仅覆盖飞行器表面的平面部分,未能在多视、长距离和部分隐蔽物体的物理情景中攻击探测器。为了缩小数字攻击与物理攻击之间的差距,我们利用全三维车辆表面来提议一个强大的全覆盖式卡穆佛列攻击(CFA)来欺骗探测器。具体地说,我们首先尝试将非平面伪装质素覆盖整个车辆表面。为了模拟真实世界环境状况,我们随后引入一个转换功能,将伪装的飞行器转换为光现实情景。最后,我们设计了一个高效的丢失功能来优化迷彩纹。实验表明,全覆盖式迷彩攻击不仅能够超越各种试验案例下的最先进方法,而且能够概括到不同的环境、车辆和物体探测器。