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利用关系图集成对抗攻击提高对抗迁移能力。

Improving the adversarial transferability with relational graphs ensemble adversarial attack.

作者信息

Pi Jiatian, Luo Chaoyang, Xia Fen, Jiang Ning, Wu Haiying, Wu Zhiyou

机构信息

National Center for Applied Mathematics in Chongqing, Chongqing, China.

Department of Mathematical Sciences, Chongqing Normal University, Chongqing, China.

出版信息

Front Neurosci. 2023 Feb 1;16:1094795. doi: 10.3389/fnins.2022.1094795. eCollection 2022.

Abstract

In transferable black-box attacks, adversarial samples remain adversarial across multiple models and are more likely to attack unknown models. From this view, acquiring and exploiting multiple models is the key to improving transferability. For exploiting multiple models, existing approaches concentrate on differences among models but ignore the underlying complex dependencies. This exacerbates the issue of unbalanced and inadequate attacks on multiple models. To this problem, this paper proposes a novel approach, called Relational Graph Ensemble Attack (RGEA), to exploit the dependencies among multiple models. Specifically, we redefine the multi-model ensemble attack as a multi-objective optimization and create a sub-optimization problem to compute the optimal attack direction, but there are serious time-consuming problems. For this time-consuming problem, we define the vector representation of the model, extract the dependency matrix, and then equivalently simplify the sub-optimization problem by utilizing the dependency matrix. Finaly, we theoretically extend to investigate the connection between RGEA and the traditional multiple gradient descent algorithm (MGDA). Notably, combining RGEA further enhances the transferability of existing gradient-based attacks. The experiments using ten normal training models and ten defensive models on the labeled face in the wild (LFW) dataset demonstrate that RGEA improves the success rate of white-box attacks and further boosts the transferability of black-box attacks.

摘要

在可迁移黑盒攻击中,对抗样本在多个模型间仍具对抗性,且更有可能攻击未知模型。据此观点,获取并利用多个模型是提升可迁移性的关键。对于利用多个模型,现有方法聚焦于模型间的差异,却忽略了潜在的复杂依赖关系。这加剧了对多个模型攻击不均衡且不充分的问题。针对此问题,本文提出一种名为关系图集成攻击(RGEA)的新方法,以利用多个模型间的依赖关系。具体而言,我们将多模型集成攻击重新定义为多目标优化,并创建一个子优化问题来计算最优攻击方向,但存在严重的耗时问题。针对此耗时问题,我们定义模型的向量表示,提取依赖矩阵,然后利用依赖矩阵等效简化子优化问题。最后,我们从理论上进行拓展,研究RGEA与传统多梯度下降算法(MGDA)之间的联系。值得注意的是,结合RGEA进一步提升了现有基于梯度攻击的可迁移性。在野生标注人脸(LFW)数据集上使用十个正常训练模型和十个防御模型进行的实验表明,RGEA提高了白盒攻击的成功率,并进一步提升了黑盒攻击的可迁移性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6c5c/9929554/513ec57499b4/fnins-16-1094795-g0001.jpg

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