It is known that deep neural networks (DNNs) are vulnerable to adversarial attacks. The so-called physical adversarial examples deceive DNN-based decision makers by attaching adversarial patches to real objects. However, most of the existing works on physical adversarial attacks focus on static objects such as glass frames, stop signs and images attached to cardboard. In this work, we propose Adversarial T-shirts, a robust physical adversarial example for evading person detectors even if it could undergo non-rigid deformation due to a moving person's pose changes. To the best of our knowledge, this is the first work that models the effect of deformation for designing physical adversarial examples with respect to non-rigid objects such as T-shirts. We show that the proposed method achieves 74% and 57% attack success rates in digital and physical worlds respectively against YOLOv2. In contrast, the state-of-the-art physical attack method to fool a person detector only achieves 18% attack success rate. Furthermore, by leveraging min-max optimization, we extend our method to the ensemble attack setting against two object detectors YOLO-v2 and Faster R-CNN simultaneously.
翻译:众所周知,深神经网络(DNN)很容易受到对抗性攻击。所谓的物理对抗性实例通过将对抗性补丁附加在真实物体上,欺骗了DNN的决策者。然而,关于物理对抗性攻击的现有工作大多侧重于静态物体,如玻璃框、停止标志和纸板上附图象。在这项工作中,我们提议了Aversarial T恤衫,这是一个强大的物理对抗性范例,用于躲避人探测器,即使该探测器可能因移动的人的姿势变化而发生非硬性畸形。据我们所知,这是为设计非硬性物体(如T恤衫)的物理对抗性攻击例子而模拟变形效果的首项工作。我们表明,拟议方法分别针对YOLOv2在数字和物理世界中达到74%和57%的攻击成功率。相比之下,最先进的实际攻击方法,使一个人探测器愚弄,但只达到18%的攻击成功率。此外,通过利用微轴优化,我们将我们的方法推广到对两个物体(Axir-OL)和同步的Ren-Olegroup2同时设置两个探测器。