2024
DOI: 10.1007/s40747-024-01522-z
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DIB-UAP: enhancing the transferability of universal adversarial perturbation via deep information bottleneck

Yang Wang,
Yunfei Zheng,
Lei Chen
et al.

Abstract: Significant structural differences in DNN-based object detectors hinders the transferability of adversarial attacks. Studies show that intermediate features extracted by the detector contain more model-independent information, and disrupting these features can enhance attack transferability across different detectors. However, the challenge lies in selecting crucial features that impact detection from redundant intermediate features. To address this issue, we introduce the Deep information bottleneck universal… Show more

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