Invisible Optical Adversarial Stripes on Traffic Sign against Autonomous Vehicles

Dongfang Guo, Yuting Wu, Yimin Dai, Pengfei Zhou, Xin Lou, Rui Tan
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Abstract

Camera-based computer vision is essential to autonomous vehicle’s perception. This paper presents an attack that uses light-emitting diodes and exploits the camera’s rolling shutter effect to create adversarial stripes in the captured images to mislead traffic sign recognition. The attack is stealthy because the stripes on the traffic sign are invisible to human. For the attack to be threatening, the recognition results need to be stable over consecutive image frames. To achieve this, we design and implement GhostStripe , an attack system that controls the timing of the modulated light emission to adapt to camera operations and victim vehicle movements. Evaluated on real testbeds, GhostStripe can stably spoof the traffic sign recognition results for up to 94% of frames to a wrong class when the victim vehicle passes the road section. In reality, such attack effect may fool victim vehicles into life-threatening incidents. We discuss the countermeasures at the levels of camera sensor, perception model, and autonomous driving system.
交通标志上的隐形光学对抗条纹对抗自动驾驶汽车
基于摄像头的计算机视觉对自动驾驶汽车的感知至关重要。本文介绍了一种使用发光二极管并利用摄像头的快门滚动效应在捕获的图像中创建对抗条纹来误导交通标志识别的攻击。这种攻击具有隐蔽性,因为人类看不到交通标志上的条纹。要使攻击具有威胁性,识别结果必须在连续的图像帧中保持稳定。为此,我们设计并实现了 GhostStripe 攻击系统,该系统可控制调制光发射的时间,以适应摄像头的操作和受害者车辆的移动。在实际测试平台上进行评估后发现,当受害车辆通过该路段时,GhostStripe 可以将高达 94% 的帧的交通标志识别结果稳定地欺骗为错误类别。在现实中,这种攻击效果可能会使受害车辆陷入危及生命的事故中。我们从摄像头传感器、感知模型和自动驾驶系统三个层面讨论了应对措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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