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Cognitive data augmentation for adversarial defense via pixel masking

机译:通过像素屏蔽的对抗防御认知数据增强

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The vulnerability of deep networks towards adversarial perturbations has motivated the researchers to design detection and mitigation algorithms. Inspired by the dropout and dropconnect algorithms as well as augmentation techniques, this paper presents & ldquo;PixelMask & rdquo; based data augmentation as an efficient method of reducing the sensitivity of convolutional neural networks (CNNs) towards adversarial attacks. In the proposed approach, samples generated using PixelMask are used as augmented data, which helps in learning robust CNN models. Experiments performed with multiple databases and architectures show that the proposed PixelMask based data augmentation approach improves the classification performance on adversarially perturbed images. The proposed defense mechanism can be applied effectively for different adversarial attacks and can easily be combined with any deep neural network (DNN) architecture to increase the robustness. The effectiveness of the proposed defense is demonstrated in gray-box, white box, and unseen train-test attack scenarios. For example, on the CIFAR-10 database under adaptive attack (i.e., projected gradient descent), the proposed PixelMask is able to improve the recognition performance of CNN by at-least 22.69%. Another advantage of the proposed algorithm over several existing defense algorithms is that the proposed defense either is able to retain or increase the classification accuracy of clean examples.(c) 2021 Elsevier B.V. All rights reserved.
机译:深度网络对抗对抗扰动的脆弱性是有动力设计检测和缓解算法的研究人员。本文介绍了辍学和丢弃算法以及增强技术,“ Pixelmask”基于数据增强作为降低卷积神经网络(CNNS)对侵犯攻击的敏感性的有效方法。在所提出的方法中,使用PixelMask产生的样本用作增强数据,这有助于学习鲁棒CNN模型。用多个数据库和架构执行的实验表明,所提出的基于PixelMask的数据增强方法可以提高对抗性扰动图像上的分类性能。所提出的防御机制可以有效地应用于不同的对抗攻击,并且可以容易地与任何深度神经网络(DNN)架构相结合,以增加鲁棒性。拟议防御的有效性在灰盒,白色框和看不见的火车测试攻击情景中展示。例如,在自适应攻击下的CIFAR-10数据库(即,投影梯度下降)上,所提出的PixelMask能够通过至少22.69%提高CNN的识别性能。所提出的算法在几个现有的防御算法上的另一个优点是,所提出的防守是能够保留或提高清洁示例的分类准确性。(c)2021 Elsevier B.v.保留所有权利。

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