DynamicPAE: Generating Scene-Aware Physical Adversarial Examples in Real-Time
Jin Hu, Xianglong Liu, Jiakai Wang, Junkai Zhang, Xianqi Yang, Haotong Qin, Yuqing Ma, Ke Xu

TL;DR
DynamicPAE introduces a real-time, scene-aware generative framework for physical adversarial examples, significantly improving attack effectiveness against object detectors by addressing scene variability and feedback noise.
Contribution
It is the first to enable scene-aware, real-time physical adversarial example generation with novel techniques for feedback enrichment and scenario alignment.
Findings
Achieves a 2.07× boost in attack success rate over static methods.
Attains 58.8% average AP drop on object detectors like DETR.
Demonstrates effectiveness in both digital and physical environments.
Abstract
Physical adversarial examples (PAEs) are regarded as whistle-blowers of real-world risks in deep-learning applications, thus worth further investigation. However, current PAE generation studies show limited adaptive attacking ability to diverse and varying scenes, revealing the urgent requirement of dynamic PAEs that are generated in real time and conditioned on the observation from the attacker. The key challenge in generating dynamic PAEs is learning the sparse relation between PAEs and the observation of attackers under the noisy feedback of attack training. To address the challenge, we present DynamicPAE, the first generative framework that enables scene-aware real-time physical attacks. Specifically, to address the noisy feedback problem that obfuscates the exploration of scene-related PAEs, we introduce the residual-guided adversarial pattern exploration technique. Residual-guided…
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