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Main Authors: Luo, Yuyang, Wang, Xiaosen, Ge, Zhijin, He, Yingzhe
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.16052
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author Luo, Yuyang
Wang, Xiaosen
Ge, Zhijin
He, Yingzhe
author_facet Luo, Yuyang
Wang, Xiaosen
Ge, Zhijin
He, Yingzhe
contents Adversarial examples pose significant threats to deep neural networks (DNNs), and their property of transferability in the black-box setting has led to the emergence of transfer-based attacks, making it feasible to target real-world applications employing DNNs. Among them, feature-level attacks, where intermediate features are perturbed based on feature importance weight matrix computed from transformed images, have gained popularity. In this work, we find that existing feature-level attacks primarily manipulate the semantic information to derive the weight matrix. Inspired by several works that find CNNs tend to focus more on high-frequency components (a.k.a. abstract features, e.g., texture, edge, etc.), we validate that transforming images in the high-frequency space also improves transferability. Based on this finding, we propose a balanced approach called Semantic and Abstract FEatures disRuption (SAFER). Specifically, SAFER conducts BLOCKMIX on the input image and SELF-MIX on the frequency spectrum when computing the weight matrix to highlight crucial features. By using such a weight matrix, we can direct the attacker to disrupt both semantic and abstract features, leading to improved transferability. Extensive experiments on the ImageNet dataset also demonstrate the effectiveness of our method in boosting adversarial transferability.
format Preprint
id arxiv_https___arxiv_org_abs_2507_16052
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Disrupting Semantic and Abstract Features for Better Adversarial Transferability
Luo, Yuyang
Wang, Xiaosen
Ge, Zhijin
He, Yingzhe
Computer Vision and Pattern Recognition
Adversarial examples pose significant threats to deep neural networks (DNNs), and their property of transferability in the black-box setting has led to the emergence of transfer-based attacks, making it feasible to target real-world applications employing DNNs. Among them, feature-level attacks, where intermediate features are perturbed based on feature importance weight matrix computed from transformed images, have gained popularity. In this work, we find that existing feature-level attacks primarily manipulate the semantic information to derive the weight matrix. Inspired by several works that find CNNs tend to focus more on high-frequency components (a.k.a. abstract features, e.g., texture, edge, etc.), we validate that transforming images in the high-frequency space also improves transferability. Based on this finding, we propose a balanced approach called Semantic and Abstract FEatures disRuption (SAFER). Specifically, SAFER conducts BLOCKMIX on the input image and SELF-MIX on the frequency spectrum when computing the weight matrix to highlight crucial features. By using such a weight matrix, we can direct the attacker to disrupt both semantic and abstract features, leading to improved transferability. Extensive experiments on the ImageNet dataset also demonstrate the effectiveness of our method in boosting adversarial transferability.
title Disrupting Semantic and Abstract Features for Better Adversarial Transferability
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.16052