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Invisible Poisoning: Highly Stealthy Targeted Poisoning Attack

机译:隐形中毒:高度隐身的有针对性的中毒攻击

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Deep learning is widely applied to various areas for its great performance. However, it is vulnerable to adversarial attacks and poisoning attacks, which arouses a lot of concerns. A number of attack methods and defense strategies have been proposed, most of which focus on adversarial attacks that happen in the testing process. Poisoning attacks, using poisoned-training data to attack deep learning models, are more difficult to defend since the models heavily depend on the training data and strategies to guarantee their performances. Generally, poisoning attacks are conducted by leveraging benign examples with poisoned labels or poison-training examples with benign labels. Both cases are easy to detect. In this paper, we propose a novel poisoning attack named Invisible Poisoning Attack (IPA). In IPA, we use highly stealthy poison-training examples with benign labels, perceptually similar to their benign counterparts, to train the deep learning model. During the testing process, the poisoned model will handle the benign examples correctly, while output erroneous results when fed by the target benign examples (poisoning-trigger examples). We adopt the Non-dominated Sorting Genetic Algorithm (NSGA-II) as the optimizer for evolving the highly stealthy poison-training examples. The generated approximate optimal examples are promised to be both invisible and effective in attacking the target model. We verify the effectiveness of IPA against face recognition systems on different face datasets, including attack ability, stealthiness, and transferability performance.
机译:深度学习以其出色的性能而广泛应用于各个领域。但是,它容易受到对抗性攻击和中毒攻击,这引起了很多关注。已经提出了许多攻击方法和防御策略,其中大多数集中在测试过程中发生的对抗性攻击。使用中毒的训练数据攻击深度学习模型的中毒攻击更难以防御,因为模型严重依赖于训练数据和策略来保证其性能。通常,中毒攻击是通过利用带有中毒标签的良性示例或带有良性标签的毒物训练示例来进行的。两种情况都很容易发现。在本文中,我们提出了一种新型的中毒攻击,称为“隐形中毒攻击(IPA)”。在IPA中,我们使用带有良性标签的高度隐秘的毒物训练示例,在感觉上类似于它们的良性标签,以训练深度学习模型。在测试过程中,中毒模型将正确处理良性示例,而在由目标良性示例(中毒触发示例)提供反馈时输出错误结果。我们采用非支配排序遗传算法(NSGA-II)作为优化程序,以发展高度隐身的毒物训练实例。所产生的近似最佳实例被认为在攻击目标模型方面既不可见又有效。我们验证了IPA在不同面部数据集上针对面部识别系统的有效性,包括攻击能力,隐身性和可传递性性能。

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