Sensitive Region-Aware Black-Box Adversarial Attacks.

Published in Information Sciences, 2023

Chenhao Lin, Sicong Han, Jiongli Zhu, Qian Li, Chao Shen, Youwei Zhang, Xiaohong Guan.

Recent research on adversarial attacks has highlighted the vulnerability of deep neural networks (DNNs) to perturbations. While existing studies generate adversarial perturbations spread across the entire image, these global perturbations may be visible to human eyes, reducing their effectiveness in real-world scenarios. To alleviate this issue, recent works propose to modify a limited number of input pixels to implement adversarial attacks. However, these approaches still have limitations in terms of both imperceptibility and efficiency. This paper proposes a novel plug-in framework called Sensitive Region-Aware Attack (SRA) to generate soft-label black-box adversarial examples using the sensitivity map and evolution strategies. First, a transferable black-box sensitivity map generation approach is proposed for identifying the sensitive regions of input images. To perform SRA with a limited amount of perturbed pixels, a dynamic and adjustment strategy is introduced. Furthermore, an adaptive evolution strategy is employed to optimize the selection of generated sensitive regions, allowing for the execution of effective and imperceptible attacks. Experimental results demonstrate that our SRA achieves an imperceptible soft-label black-box attack with a 96.43% success rate using less than 20% of the image pixels on ImageNet and a 100% success rate using 30% of the image pixels on CIFAR-10.


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