Transient Adversarial 3D Projection Attacks on Object Detection in Autonomous Driving
- URL: http://arxiv.org/abs/2409.17403v1
- Date: Wed, 25 Sep 2024 22:27:11 GMT
- Title: Transient Adversarial 3D Projection Attacks on Object Detection in Autonomous Driving
- Authors: Ce Zhou, Qiben Yan, Sijia Liu,
- Abstract summary: We introduce an adversarial 3D projection attack specifically targeting object detection in autonomous driving scenarios.
Our results demonstrate the effectiveness of the proposed attack in deceiving YOLOv3 and Mask R-CNN in physical settings.
- Score: 15.516055760190884
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Object detection is a crucial task in autonomous driving. While existing research has proposed various attacks on object detection, such as those using adversarial patches or stickers, the exploration of projection attacks on 3D surfaces remains largely unexplored. Compared to adversarial patches or stickers, which have fixed adversarial patterns, projection attacks allow for transient modifications to these patterns, enabling a more flexible attack. In this paper, we introduce an adversarial 3D projection attack specifically targeting object detection in autonomous driving scenarios. We frame the attack formulation as an optimization problem, utilizing a combination of color mapping and geometric transformation models. Our results demonstrate the effectiveness of the proposed attack in deceiving YOLOv3 and Mask R-CNN in physical settings. Evaluations conducted in an indoor environment show an attack success rate of up to 100% under low ambient light conditions, highlighting the potential damage of our attack in real-world driving scenarios.
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