Deep neural networks (DNN) have been widely deployed in various applications. However, many researches indicated that DNN is vulnerable to backdoor attacks. The attacker can create a hidden backdoor in target DNN model, and trigger the malicious behaviors by submitting specific backdoor instance. However, almost all the existing backdoor works focused on the digital domain, while few studies investigate the backdoor attacks in real physical world. Restricted to a variety of physical constraints, the performance of backdoor attacks in the real physical world will be severely degraded. In this paper, we propose a robust physical backdoor attack method, PTB (physical transformations for backdoors), to implement the backdoor attacks against deep learning models in the real physical world. Specifically, in the training phase, we perform a series of physical transformations on these injected backdoor instances at each round of model training, so as to simulate various transformations that a backdoor may experience in real world, thus improves its physical robustness. Experimental results on the state-of-the-art face recognition model show that, compared with the backdoor methods that without PTB, the proposed attack method can significantly improve the performance of backdoor attacks in real physical world. Under various complex physical conditions, by injecting only a very small ratio (0.5%) of backdoor instances, the attack success rate of physical backdoor attacks with the PTB method on VGGFace is 82%, while the attack success rate of backdoor attacks without the proposed PTB method is lower than 11%. Meanwhile, the normal performance of the target DNN model has not been affected.
翻译:深心神经网络(DNN)被广泛应用于各种应用中。 但是,许多研究表明DNN很容易受到后门攻击。 攻击者可以在目标 DNN 模型中创建隐藏的后门后门攻击, 并通过提交特定的后门实例触发恶意行为 。 然而, 几乎所有现有的后门工作都集中在数字领域, 而很少有研究调查现实物理世界中后门攻击的各种变化。 受各种物理限制, 真正的物理世界中后门攻击的表现将会严重退化 。 在本文中, 我们提出一种强大的物理后门攻击方法, PTB(对后门的物理变换), 以便在真正的物理世界中实施后门攻击模式。 在培训阶段,我们在每一轮模式培训中都对这些注入的后门事件进行一系列物理变异, 模拟后门在现实世界中可能经历的各种变异, 从而改善它的体力。 与后门攻击相比, 后门的实验结果显示, 后门攻击方法, 而不是PTB(对后门的物理变异变换), 提议的PTB攻击率方法可以显著地改进世界内攻击的后性攻击率率。 。 在复杂的物理攻击中,提议的后路攻击率中, 22攻击率只有的反攻击率只有低的反攻击率, 25攻击率影响。