Adv-watermark: A Novel Watermark Perturbation for Adversarial Examples
August 05, 2020 ยท Declared Dead ยท ๐ ACM Multimedia
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Authors
Xiaojun Jia, Xingxing Wei, Xiaochun Cao, Xiaoguang Han
arXiv ID
2008.01919
Category
cs.CR: Cryptography & Security
Cross-listed
cs.MM
Citations
102
Venue
ACM Multimedia
Last Checked
2 months ago
Abstract
Recent research has demonstrated that adding some imperceptible perturbations to original images can fool deep learning models. However, the current adversarial perturbations are usually shown in the form of noises, and thus have no practical meaning. Image watermark is a technique widely used for copyright protection. We can regard image watermark as a king of meaningful noises and adding it to the original image will not affect people's understanding of the image content, and will not arouse people's suspicion. Therefore, it will be interesting to generate adversarial examples using watermarks. In this paper, we propose a novel watermark perturbation for adversarial examples (Adv-watermark) which combines image watermarking techniques and adversarial example algorithms. Adding a meaningful watermark to the clean images can attack the DNN models. Specifically, we propose a novel optimization algorithm, which is called Basin Hopping Evolution (BHE), to generate adversarial watermarks in the black-box attack mode. Thanks to the BHE, Adv-watermark only requires a few queries from the threat models to finish the attacks. A series of experiments conducted on ImageNet and CASIA-WebFace datasets show that the proposed method can efficiently generate adversarial examples, and outperforms the state-of-the-art attack methods. Moreover, Adv-watermark is more robust against image transformation defense methods.
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