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AdvAD: Exploring Non-Parametric Diffusion for Imperceptible Adversarial Attacks

Machine Learning 2025-03-13 v1 Computer Vision and Pattern Recognition

Abstract

Imperceptible adversarial attacks aim to fool DNNs by adding imperceptible perturbation to the input data. Previous methods typically improve the imperceptibility of attacks by integrating common attack paradigms with specifically designed perception-based losses or the capabilities of generative models. In this paper, we propose Adversarial Attacks in Diffusion (AdvAD), a novel modeling framework distinct from existing attack paradigms. AdvAD innovatively conceptualizes attacking as a non-parametric diffusion process by theoretically exploring basic modeling approach rather than using the denoising or generation abilities of regular diffusion models requiring neural networks. At each step, much subtler yet effective adversarial guidance is crafted using only the attacked model without any additional network, which gradually leads the end of diffusion process from the original image to a desired imperceptible adversarial example. Grounded in a solid theoretical foundation of the proposed non-parametric diffusion process, AdvAD achieves high attack efficacy and imperceptibility with intrinsically lower overall perturbation strength. Additionally, an enhanced version AdvAD-X is proposed to evaluate the extreme of our novel framework under an ideal scenario. Extensive experiments demonstrate the effectiveness of the proposed AdvAD and AdvAD-X. Compared with state-of-the-art imperceptible attacks, AdvAD achieves an average of 99.9%\% (+17.3%\%) ASR with 1.34 (-0.97) l2l_2 distance, 49.74 (+4.76) PSNR and 0.9971 (+0.0043) SSIM against four prevalent DNNs with three different architectures on the ImageNet-compatible dataset. Code is available at https://github.com/XianguiKang/AdvAD.

Keywords

Cite

@article{arxiv.2503.09124,
  title  = {AdvAD: Exploring Non-Parametric Diffusion for Imperceptible Adversarial Attacks},
  author = {Jin Li and Ziqiang He and Anwei Luo and Jian-Fang Hu and Z. Jane Wang and Xiangui Kang},
  journal= {arXiv preprint arXiv:2503.09124},
  year   = {2025}
}

Comments

Accept by NeurIPS 2024. Please cite this paper using the following format: J. Li, Z. He, A. Luo, J. Hu, Z. Wang, X. Kang*, "AdvAD: Exploring Non-Parametric Diffusion for Imperceptible Adversarial Attacks", the 38th Annual Conference on Neural Information Processing Systems (NeurIPS), Vancouver, Canada, Dec 9-15, 2024. Code: https://github.com/XianguiKang/AdvAD

R2 v1 2026-06-28T22:17:12.365Z