Deep Neural Networks (DNNs) have been extensively utilized in aerial detection. However, DNNs' sensitivity and vulnerability to maliciously elaborated adversarial examples have progressively garnered attention. Recently, physical attacks have gradually become a hot issue due to they are more practical in the real world, which poses great threats to some security-critical applications. In this paper, we take the first attempt to perform physical attacks in contextual form against aerial detection in the physical world. We propose an innovative contextual attack method against aerial detection in real scenarios, which achieves powerful attack performance and transfers well between various aerial object detectors without smearing or blocking the interested objects to hide. Based on the findings that the targets' contextual information plays an important role in aerial detection by observing the detectors' attention maps, we propose to make full use of the contextual area of the interested targets to elaborate contextual perturbations for the uncovered attacks in real scenarios. Extensive proportionally scaled experiments are conducted to evaluate the effectiveness of the proposed contextual attack method, which demonstrates the proposed method's superiority in both attack efficacy and physical practicality.
翻译:在空中探测中广泛使用了深神经网络(DNN),然而,DNN的敏感性和易感性逐渐引起人们的注意。最近,人身攻击由于在现实世界中更加实际,对一些安全关键应用构成了极大的威胁,因此逐渐成为一个热点问题。在本文中,我们首次尝试以背景形式进行人身攻击,反对在现实世界中进行空中探测。我们提出了一种在现实情景中进行空中探测的创新背景攻击方法,这种方法能够取得强大的攻击性能,并在各种空中物体探测器之间进行转移,而不会对感兴趣的物体进行抹黑或屏蔽。根据调查结果,目标的背景资料通过观察探测器的注意地图,在空中探测方面发挥着重要作用。我们提议充分利用有关目标的上下文区域,为在真实情景中未发现的攻击制定背景干扰。我们进行了大规模按比例的实验,以评价拟议的背景攻击方法的有效性,该方法显示了拟议方法在攻击效率和实际实用性两方面的优势。</s>