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Reflection Backdoor: A Natural Backdoor Attack on Deep Neural Networks

机译:反思后门:对深神经网络的自然后门攻击

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Recent studies have shown that DNNs can be compromised by backdoor attacks crafted at training time. A backdoor attack installs a backdoor into the victim model by injecting a backdoor pattern into a small proportion of the training data. At test time, the victim model behaves normally on clean test data, yet consistently predicts a specific (likely incorrect) target class whenever the backdoor pattern is present in a test example. While existing backdoor attacks are effective, they are not stealthy. The modifications made on training data or labels are often suspicious and can be easily detected by simple data filtering or human inspection. In this paper, we present a new type of backdoor attack inspired by an important natural phenomenon: reflection. Using mathematical modeling of physical reflection models, we propose reflection backdoor (Refool) to plant reflections as backdoor into a victim model. We demonstrate on 3 computer vision tasks and 5 datasets that, Refoolcan attack state-of-the-art DNNs with high success rate, and is resistant to state-of-the-art backdoor defenses.
机译:最近的研究表明,DNN可以通过培训时间制作的后门攻击损害。后门攻击通过将后门模式注入小比例的培训数据来将后门安装到受害者模型中。在测试时间时,受害者模型的行为正常在清洁测试数据上行使,但每当在测试示例中存在后门模式时,仍然一致地预测特定(可能的不正确)目标类。虽然现有的后门攻击是有效的,但它们并不是隐身。对培训数据或标签的修改通常可疑,并且可以通过简单的数据过滤或人类检查轻松检测到。在本文中,我们提出了一种新型的后门攻击,灵感来自重要的自然现象:反思。使用物理反射模型的数学建模,我们提出反射后门(Refool)将植物反射作为后门进入受害者模型。我们展示了3台计算机愿望任务和5个数据集,重新烹饪攻击最先进的DNN,具有高成功率,并且抵御最先进的后门防御。

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