Prior literature on adversarial attack methods has mainly focused on attacking with and defending against a single threat model, e.g., perturbations bounded in Lp ball. However, multiple threat models can be combined into composite perturbations. One such approach, composite adversarial attack (CAA), not only expands the perturbable space of the image, but also may be overlooked by current modes of robustness evaluation. This paper demonstrates how CAA's attack order affects the resulting image, and provides real-time inferences of different models, which will facilitate users' configuration of the parameters of the attack level and their rapid evaluation of model prediction. A leaderboard to benchmark adversarial robustness against CAA is also introduced.
翻译:先前关于对抗性攻击方法的文献主要侧重于攻击和防御单一威胁模式,例如受Lp球干扰的干扰,但多种威胁模式可以合并为复合扰动,其中一种方法,即复合对抗性攻击,不仅扩大了图像的可扰动空间,而且可能被目前的稳健性评价模式所忽视。本文展示了CAA的攻击秩序如何影响由此产生的图像,并提供了不同模式的实时推断,这将便利用户对攻击等级参数的配置和对模型预测的快速评估。还引入了对CAAA进行对抗性强力衡量的领先板。