Modern object detectors are vulnerable to adversarial examples, which brings potential risks to numerous applications, e.g., self-driving car. Among attacks regularized by $\ell_p$ norm, $\ell_0$-attack aims to modify as few pixels as possible. Nevertheless, the problem is nontrivial since it generally requires to optimize the shape along with the texture simultaneously, which is an NP-hard problem. To address this issue, we propose a novel method of Adversarial Semantic Contour (ASC) guided by object contour as prior. With this prior, we reduce the searching space to accelerate the $\ell_0$ optimization, and also introduce more semantic information which should affect the detectors more. Based on the contour, we optimize the selection of modified pixels via sampling and their colors with gradient descent alternately. Extensive experiments demonstrate that our proposed ASC outperforms the most commonly manually designed patterns (e.g., square patches and grids) on task of disappearing. By modifying no more than 5\% and 3.5\% of the object area respectively, our proposed ASC can successfully mislead the mainstream object detectors including the SSD512, Yolov4, Mask RCNN, Faster RCNN, etc.
翻译:现代物体探测器很容易受到对抗性例子的影响,这给许多应用带来潜在风险,例如自驾驶车等。在常规攻击中,美元=美元=美元=美元=美元=美元=美元=0.00美元-攻击旨在尽可能修改像素。然而,问题是非三相性的,因为通常需要同时优化形状和纹理的形状,这是一个NP-硬问题。为了解决这个问题,我们提议了一种新颖的由天体轮廓引导的反静脉管(ASC)方法。之前,我们减少了搜索空间,加快了美元=0.0美元的优化,还引入了更多的语义信息,对探测器的影响会更大。根据轮廓,我们优化了通过取样和颜色与梯度交替优化的改良像素的选择。广泛的实验表明,我们提议的ASC比最常用的手动设计模式(如平方形和网格)要好过。我们提议的ASSC能够成功地改变物体区域551美元=3.51和3.5°4, 包括SANSM, 我们提议的ASG, ASB, ASB, 包括SISG, ASiral。