CVFeb 27, 2023

CBA: Contextual Background Attack against Optical Aerial Detection in the Physical World

arXiv:2302.13519v348 citationsh-index: 33
Originality Incremental advance
AI Analysis

This work addresses a domain-specific problem for aerial detection systems, offering a novel attack method that could serve as a benchmark for assessing adversarial robustness, though it is incremental in the context of physical adversarial attacks.

The paper tackles the problem of weak attack efficacy and transferability in physical adversarial attacks against aerial detectors by proposing the Contextual Background Attack (CBA) framework, which optimizes adversarial patches to cover critical contextual background areas without smudging the target objects, achieving strong attack performance in physical scenarios.

Patch-based physical attacks have increasingly aroused concerns. However, most existing methods focus on obscuring targets captured on the ground, and some of these methods are simply extended to deceive aerial detectors. They smear the targeted objects in the physical world with the elaborated adversarial patches, which can only slightly sway the aerial detectors' prediction and with weak attack transferability. To address the above issues, we propose to perform Contextual Background Attack (CBA), a novel physical attack framework against aerial detection, which can achieve strong attack efficacy and transferability in the physical world even without smudging the interested objects at all. Specifically, the targets of interest, i.e. the aircraft in aerial images, are adopted to mask adversarial patches. The pixels outside the mask area are optimized to make the generated adversarial patches closely cover the critical contextual background area for detection, which contributes to gifting adversarial patches with more robust and transferable attack potency in the real world. To further strengthen the attack performance, the adversarial patches are forced to be outside targets during training, by which the detected objects of interest, both on and outside patches, benefit the accumulation of attack efficacy. Consequently, the sophisticatedly designed patches are gifted with solid fooling efficacy against objects both on and outside the adversarial patches simultaneously. Extensive proportionally scaled experiments are performed in physical scenarios, demonstrating the superiority and potential of the proposed framework for physical attacks. We expect that the proposed physical attack method will serve as a benchmark for assessing the adversarial robustness of diverse aerial detectors and defense methods.

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