基于图像重构的n像素攻击防御

Zi-Yuan Liu, Peter Shaojui Wang, Shou-Ching Hsiao, R. Tso
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引用次数: 2

摘要

由于机器学习和深度学习在现实应用中大量用于图像识别,因此如何避免对抗性攻击成为一个重要问题。攻击者通常会在正常图像中添加对抗性扰动以欺骗模型。n像素攻击是最近流行的对抗方法之一,通过简单地改变图像中的几个像素。我们观察到,改变这几个像素会导致其与相邻像素的明显差异。因此,本研究旨在防御基于图像重建的n像素攻击。我们开发了一种三阶段重建算法来恢复欺骗图像。实验结果表明,采用本文算法对CIFAR-10测试数据集的推理准确率可达92%,表明该算法在正常数据集上仍能保持原有的推理准确率。此外,通过重建500张被攻击图像,验证了该算法对n像素攻击的防御效果。结果表明,我们有90%到92%的机会成功防御,其中N=1,3,5,10和15。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Defense against N-pixel Attacks based on Image Reconstruction
Since machine learning and deep learning are largely used for image recognition in real-world applications, how to avoid adversarial attacks become an important issue. It is common that attackers add adversarial perturbation to a normal image in order to fool the models. The N-pixel attack is one of the recently popular adversarial methods by simply changing a few pixels in the image. We observe that changing the few pixels leads to an obvious difference with its neighboring pixels. Therefore, this research aims to defend the N-pixel attacks based on image reconstruction. We develop a three-staged reconstructing algorithm to recover the fooling images. Experimental results show that the accuracy of CIFAR-10 test dataset can reach 92% after applying our proposed algorithm, indicating that the algorithm can maintain the original inference accuracy on normal dataset. Besides, the effectiveness of defending N-pixel attacks is also validated by reconstructing 500 attacked images using the proposed algorithm. The results show that we have a 90% to 92% chance of successful defense, where N=1,3,5,10,and 15.
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