Existing adversarial example research focuses on digitally inserted perturbations on top of existing natural image datasets. This construction of adversarial examples is not realistic because it may be difficult, or even impossible, for an attacker to deploy such an attack in the real-world due to sensing and environmental effects. To better understand adversarial examples against cyber-physical systems, we propose approximating the real-world through simulation. In this paper we describe our synthetic dataset generation tool that enables scalable collection of such a synthetic dataset with realistic adversarial examples. We use the CARLA simulator to collect such a dataset and demonstrate simulated attacks that undergo the same environmental transforms and processing as real-world images. Our tools have been used to collect datasets to help evaluate the efficacy of adversarial examples, and can be found at https://github.com/carla-simulator/carla/pull/4992.
翻译:现有的对抗性实例研究侧重于在现有自然图像数据集之上数字插入的扰动。这种对立性实例的构建是不现实的,因为由于遥感和环境影响,攻击者很难甚至不可能在现实世界中部署这种攻击。为了更好地了解针对网络物理系统的对抗性实例,我们提议通过模拟来接近真实世界。在本文中,我们描述了我们的合成数据集生成工具,该工具能够用现实的对抗性实例进行可缩放的合成数据集收集。我们使用CARLA模拟器收集这样一个数据集,并演示模拟攻击,这些攻击经历与真实世界图像相同的环境变换和处理。我们的工具被用来收集数据集,帮助评估对抗性实例的效力,可在https://github.com/carla-simulator/carla/pull/4992找到。