Recent studies have proven that deep neural networks are vulnerable to backdoor attacks. Specifically, by mixing a small number of poisoned samples into the training set, the behavior of the trained model can be maliciously controlled. Existing attack methods construct such adversaries by randomly selecting some clean data from the benign set and then embedding a trigger into them. However, this selection strategy ignores the fact that each poisoned sample contributes inequally to the backdoor injection, which reduces the efficiency of poisoning. In this paper, we formulate improving the poisoned data efficiency by the selection as an optimization problem and propose a Filtering-and-Updating Strategy (FUS) to solve it. The experimental results on CIFAR-10 and ImageNet-10 indicate that the proposed method is effective: the same attack success rate can be achieved with only 47% to 75% of the poisoned sample volume compared to the random selection strategy. More importantly, the adversaries selected according to one setting can generalize well to other settings, exhibiting strong transferability.
翻译:最近的研究证明,深层神经网络很容易受到后门攻击。 具体地说, 将少量有毒样本混合到训练中, 训练有素模型的行为可以受到恶意控制。 现有的攻击方法通过随机从良性集中随机选择一些清洁数据,然后将触发器嵌入它们来构造这些对手。 但是, 这一选择战略忽略了以下事实,即每个中毒样本都对后门注射有同等作用,这降低了中毒效率。 在本文中,我们通过选择来提高中毒数据的效率,将其作为一个优化问题,并提出一个过滤和升级战略(FUS)来解决这个问题。 CIFAR- 10 和 imageNet-10 的实验结果表明拟议方法是有效的: 与随机选择战略相比,只有47%至75%的中毒样本数量可以实现同样的攻击成功率。 更重要的是, 一个环境所选择的对手可以向其他环境推广, 显示强大的可转移性。