Decision-based attack poses a severe threat to real-world applications since it regards the target model as a black box and only accesses the hard prediction label. Great efforts have been made recently to decrease the number of queries; however, existing decision-based attacks still require thousands of queries in order to generate good quality adversarial examples. In this work, we find that a benign sample, the current and the next adversarial examples could naturally construct a triangle in a subspace for any iterative attacks. Based on the law of sines, we propose a novel Triangle Attack (TA) to optimize the perturbation by utilizing the geometric information that the longer side is always opposite the larger angle in any triangle. However, directly applying such information on the input image is ineffective because it cannot thoroughly explore the neighborhood of the input sample in the high dimensional space. To address this issue, TA optimizes the perturbation in the low frequency space for effective dimensionality reduction owing to the generality of such geometric property. Extensive evaluations on the ImageNet dataset demonstrate that TA achieves a much higher attack success rate within 1,000 queries and needs a much less number of queries to achieve the same attack success rate under various perturbation budgets than existing decision-based attacks. With such high efficiency, we further demonstrate the applicability of TA on real-world API, i.e., Tencent Cloud API.
翻译:基于决定的攻击对现实世界的应用构成了严重威胁,因为它将目标模型视为黑盒,只能进入硬预测标签。最近为减少查询数量做出了巨大努力;然而,现有的基于决定的攻击仍然需要数千次查询,才能产生高质量的对抗实例。在这项工作中,我们发现一个良性样本,即当前和下一个敌对实例,可以自然地在任何迭代攻击的子空间中构建三角形。根据正数属性法则,我们提议采用一个新的三角攻击(TA)来优化扰动,方法是利用几何信息,即任何三角中越长越远越大的角度对准。然而,直接应用这种关于输入图像的信息是无效的,因为它无法彻底探索高维度空间中输入样本的周边。为了解决这一问题,TAA优化低频空间的扰动,以便有效减少任何迭代攻击。基于正数属性的一般性,我们对图像网络数据集的全面评估表明,TAA在1,000个查询中达到攻击成功率要高得多,我们需要在高端空间直接应用性攻击率下进一步进行这样的查询。