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DVAE-SR: Denoiser Variational Auto-Encoder and Super-Resolution to Counter Adversarial Attacks

机译:DVAE-SR:DENOISER变分自动编码器和超分辨率,以对抗对抗攻击

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Recently, adversarial examples become one of the most dangerous risks in deep learning, which affects applications of real world such as robotics, cyber-security and computer vision. In image classification, adversarial attacks showed the ability to fool classifiers with small imperceptible perturbations added to the input. In this paper, we present an efficient defense mechanism, we call DVAE-SR that combine variational autoencoder and super-resolution to eliminate adversarial perturbation from image input before feeding it to the CNN classifier. The DVAE-SR can successfully defend against both white-box and black-box attacks without retraining CNN classifier and it recovers better accuracy than Defense-GAN and Defense-VAE..
机译:最近,对手的例子成为深度学习中最危险的风险之一,这影响了现实世界的应用,例如机器人,网络安全和计算机愿景。在图像分类中,对抗性攻击表明,欺骗分类器的能力,添加到输入中的小难以察觉的扰动。在本文中,我们提出了一种高效的防御机制,我们呼叫DVAe-SR,将变形AutoEncoder和超分辨率结合,以消除在将其馈送到CNN分类器之前的图像输入的对抗扰动。 DVAE-SR可以在没有再培训CNN分类器的情况下成功地防御白盒和黑匣子攻击,并且它比防御甘和防御vae更好地恢复了更好的精度。

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