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MAT: A Multi-strength Adversarial Training Method to Mitigate Adversarial Attacks

机译:垫:一种减轻对抗性攻击的多重侵犯训练方法

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Some recent work revealed that deep neural networks (DNNs) are vulnerable to so-called adversarial attacks where input examples are intentionally perturbed to fool DNNs. In this work, we revisit the DNN training process that includes adversarial examples into the training dataset so as to improve DNN's resilience to adversarial attacks, namely, adversarial training. Our experiments show that different adversarial strengths, i.e., perturbation levels of adversarial examples, have different working ranges to resist the attacks. Based on the observation, we propose a multi-strength adversarial training method (MAT) that combines the adversarial training examples with different adversarial strengths to defend adversarial attacks. Two training structures-mixed MAT and parallel MAT-are developed to facilitate the tradeoffs between training time and hardware cost. Our results show that MAT can substantially minimize the accuracy degradation of deep learning systems to adversarial attacks on MNIST, CIFAR-10, CIFAR-100, and SVHN. The tradeoffs between training time, robustness, and hardware cost are also well discussed on a FPGA platform.
机译:一些最近的工作透露,深度神经网络(DNN)容易受到所谓的对抗性攻击,其中输入示例有意扰乱愚弄DNN。在这项工作中,我们重新审视DNN培训过程,包括对训练数据集的对抗例子,以改善DNN对对抗攻击的影响,即对抗性培训。我们的实验表明,不同的逆势强度,即对抗性示例的扰动水平,具有不同的工作范围来抵抗攻击。基于观察,我们提出了一种多重强度的普发训练方法(垫),将对抗性训练实例与不同的侵犯优势结合起来以防御对抗性攻击。建立了两种训练结构混合垫和并联垫,以促进培​​训时间和硬件成本之间的权衡。我们的研究结果表明,垫子可以大大尽量减少深度学习系统对跨越Mnist,CiFar-10,CiFar-100和SVHN的对抗的准确性降解。在FPGA平台上还讨论了培训时间,稳健性和硬件成本之间的权衡。

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