鲁棒图像分类的自监督解纠缠嵌入

Lanqi Liu, Zhenyu Duan, Guozheng Xu, Yi Xu
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引用次数: 0

摘要

最近,深度学习算法对抗对抗样本的安全性得到了广泛的认可。现有的防御方法大多只考虑攻击对图像层面的影响,而没有研究特征分量之间相关性的影响。实际上,当一个特征分量被攻击成功时,其相关分量被攻击的概率就会更高。本文提出了一种基于自监督解缠的防御框架,通过大大降低特征成分之间的相关性,为解缠特征提供了一种通用工具,从而显著提高了分类网络的鲁棒性。该框架揭示了解纠缠嵌入在对抗样本防御中的重要作用。在多个基准数据集上进行的大量实验验证了所提出的防御框架对广泛的对抗性攻击始终具有鲁棒性。同时,该模型可以应用于任何典型的防御方法,作为一种良好的推广策略。
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Self-Supervised Disentangled Embedding For Robust Image Classification
Recently, the security of deep learning algorithms against adversarial samples has been widely recognized. Most of the existing defense methods only consider the attack influence on image level, while the effect of correlation among feature components has not been investigated. In fact, when one feature component is successfully attacked, its correlated components can be attacked with higher probability. In this paper, a self-supervised disentanglement based defense framework is proposed, providing a general tool to disentangle features by greatly reducing correlation among feature components, thus significantly improving the robustness of the classification network. The proposed framework reveals the important role of disentangled embedding in defending adversarial samples. Extensive experiments on several benchmark datasets validate that the proposed defense framework consistently presents its robustness against extensive adversarial attacks. Also, the proposed model can be applied to any typical defense method as a good promotion strategy.
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