TY - JOUR
T1 - Towards Defending Multiple ℓp -Norm Bounded Adversarial Perturbations via Gated Batch Normalization
AU - Liu, Aishan
AU - Tang, Shiyu
AU - Chen, Xinyun
AU - Huang, Lei
AU - Qin, Haotong
AU - Liu, Xianglong
AU - Tao, Dacheng
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2023.
PY - 2024/6
Y1 - 2024/6
N2 - There has been extensive evidence demonstrating that deep neural networks are vulnerable to adversarial examples, which motivates the development of defenses against adversarial attacks. Existing adversarial defenses typically improve model robustness against individual specific perturbation types (e.g., ℓ∞-norm bounded adversarial examples). However, adversaries are likely to generate multiple types of perturbations in practice (e.g., ℓ1, ℓ2, and ℓ∞ perturbations). Some recent methods improve model robustness against adversarial attacks in multiple ℓp balls, but their performance against each perturbation type is still far from satisfactory. In this paper, we observe that different ℓp bounded adversarial perturbations induce different statistical properties that can be separated and characterized by the statistics of Batch Normalization (BN). We thus propose Gated Batch Normalization (GBN) to adversarially train a perturbation-invariant predictor for defending multiple ℓp bounded adversarial perturbations. GBN consists of a multi-branch BN layer and a gated sub-network. Each BN branch in GBN is in charge of one perturbation type to ensure that the normalized output is aligned towards learning perturbation-invariant representation. Meanwhile, the gated sub-network is designed to separate inputs added with different perturbation types. We perform an extensive evaluation of our approach on commonly-used dataset including MNIST, CIFAR-10, and Tiny-ImageNet, and demonstrate that GBN outperforms previous defense proposals against multiple perturbation types (i.e., ℓ1, ℓ2, and ℓ∞ perturbations) by large margins.
AB - There has been extensive evidence demonstrating that deep neural networks are vulnerable to adversarial examples, which motivates the development of defenses against adversarial attacks. Existing adversarial defenses typically improve model robustness against individual specific perturbation types (e.g., ℓ∞-norm bounded adversarial examples). However, adversaries are likely to generate multiple types of perturbations in practice (e.g., ℓ1, ℓ2, and ℓ∞ perturbations). Some recent methods improve model robustness against adversarial attacks in multiple ℓp balls, but their performance against each perturbation type is still far from satisfactory. In this paper, we observe that different ℓp bounded adversarial perturbations induce different statistical properties that can be separated and characterized by the statistics of Batch Normalization (BN). We thus propose Gated Batch Normalization (GBN) to adversarially train a perturbation-invariant predictor for defending multiple ℓp bounded adversarial perturbations. GBN consists of a multi-branch BN layer and a gated sub-network. Each BN branch in GBN is in charge of one perturbation type to ensure that the normalized output is aligned towards learning perturbation-invariant representation. Meanwhile, the gated sub-network is designed to separate inputs added with different perturbation types. We perform an extensive evaluation of our approach on commonly-used dataset including MNIST, CIFAR-10, and Tiny-ImageNet, and demonstrate that GBN outperforms previous defense proposals against multiple perturbation types (i.e., ℓ1, ℓ2, and ℓ∞ perturbations) by large margins.
KW - Adversarial defense
KW - Batch normalization
KW - Model robustness
KW - Multiple perturbation types
UR - https://www.scopus.com/pages/publications/85169819398
U2 - 10.1007/s11263-023-01884-w
DO - 10.1007/s11263-023-01884-w
M3 - 文章
AN - SCOPUS:85169819398
SN - 0920-5691
VL - 132
SP - 1881
EP - 1898
JO - International Journal of Computer Vision
JF - International Journal of Computer Vision
IS - 6
ER -