Boosting Adversarial Transferability via Logits Mixup With Dominant Decomposed Feature | IEEE Journals & Magazine | IEEE Xplore

Boosting Adversarial Transferability via Logits Mixup With Dominant Decomposed Feature


Abstract:

Recent research has shown that adversarial samples are highly transferable and can be used to attack other unknown black-box Deep Neural Networks (DNNs). To improve the t...Show More

Abstract:

Recent research has shown that adversarial samples are highly transferable and can be used to attack other unknown black-box Deep Neural Networks (DNNs). To improve the transferability of adversarial samples, several feature-based adversarial attack methods have been proposed to disrupt neuron activation in the middle layers. However, current state-of-the-art feature-based attack methods typically require additional computation costs for estimating the importance of neurons. To address this challenge, we propose a Singular Value Decomposition (SVD)-based feature-level attack method. Our approach is inspired by the discovery that eigenvectors associated with the larger singular values decomposed from the middle layer features exhibit superior generalization and attention properties. Specifically, we conduct the attack by retaining the dominant decomposed feature that corresponds to the largest singular value (i.e., Rank-1 decomposed feature) for computing the output logits before the final softmax. These logits are later integrated with the original logits to optimize adversarial examples. Our extensive experimental results verify the effectiveness of our proposed method, which can be easily integrated into various baselines to significantly enhance the transferability of adversarial samples for disturbing normally trained CNNs and advanced defense strategies. The source code is available at Link.
Page(s): 8939 - 8951
Date of Publication: 20 September 2024

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