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Efficient History-Driven Adversarial Perturbation Distribution Learning in Low Frequency Domain.

Authors :
Cao, Han
Sun, Qindong
Li, Yaqi
Geng, Rong
Wang, Xiaoxiong
Source :
ACM Transactions on Privacy & Security; Feb2024, Vol. 27 Issue 1, p1-25, 25p
Publication Year :
2024

Abstract

The existence of adversarial image makes us have to doubt the credibility of artificial intelligence system. Attackers can use carefully processed adversarial images to carry out a variety of attacks. Inspired by the theory of image compressed sensing, this paper proposes a new black-box attack, \(\mathcal {N}\text{-HSA}_{LF}\). It uses covariance matrix adaptive evolution strategy (CMA-ES) to learn the distribution of adversarial perturbation in low frequency domain, reducing the dimensionality of solution space. And sep-CMA-ES is used to set the covariance matrix as a diagonal matrix, which further reduces the dimensions that need to be updated for the covariance matrix of multivariate Gaussian distribution learned in attacks, thereby reducing the computational cost of attack. And on this basis, we propose history-driven mean update and current optimal solution-guided improvement strategies to avoid the evolution of distribution to a worse direction. The experimental results show that the proposed \(\mathcal {N}\text{-HSA}_{LF}\) can achieve a higher attack success rate with fewer queries on attacking both CNN-based and transformer-based target models under \(L_2\) -norm and \(L_\infty\) -norm constraints of perturbation. We also conduct an ablation study and the results show that the proposed improved strategies can effectively reduce the number of visits to the target model when making adversarial examples for hard examples. In addition, our attack is able to make the integrated defense strategy of GRIP-GAN and noise-embedded training ineffective to a certain extent. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
24712566
Volume :
27
Issue :
1
Database :
Complementary Index
Journal :
ACM Transactions on Privacy & Security
Publication Type :
Academic Journal
Accession number :
175413948
Full Text :
https://doi.org/10.1145/3632293