PLA-LiDAR: Physical Laser Attacks against LiDAR-based 3D Object Detection in Autonomous Vehicle

Zizhi Jin, Xiaoyu Ji, Yushi Cheng, Bo Yang, Chen Yan, Wenyuan Xu
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引用次数: 8

Abstract

Autonomous vehicles and robots increasingly exploit LiDAR-based 3D object detection systems to detect obstacles in environment. Correct detection and classification are important to ensure safe driving. Though existing work has demonstrated the feasibility of manipulating point clouds to spoof 3D object detectors, most of the attempts are conducted digitally. In this paper, we investigate the possibility of physically fooling LiDAR-based 3D object detection by injecting adversarial point clouds using lasers. First, we develop a laser transceiver that can inject up to 4200 points, which is 20 times more than prior work, and can measure the scanning cycle of victim LiDARs to schedule the spoofing laser signals. By designing a control signal method that converts the coordinates of point clouds to control signals and an adversarial point cloud optimization method with physical constraints of LiDARs and attack capabilities, we manage to inject spoofing point cloud with desired point cloud shapes into the victim LiDAR physically. We can launch four types of attacks, i.e., naive hiding, record-based creating, optimization-based hiding, and optimization-based creating. Extensive experiments demonstrate the effectiveness of our attacks against two commercial LiDAR and three detectors. We also discuss defense strategies at the sensor and AV system levels.
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PLA-LiDAR:自动驾驶车辆中基于lidar的三维目标检测的物理激光攻击
自动驾驶汽车和机器人越来越多地利用基于激光雷达的3D物体检测系统来检测环境中的障碍物。正确的检测和分类对于确保安全驾驶至关重要。虽然现有的工作已经证明了操纵点云来欺骗3D目标探测器的可行性,但大多数尝试都是数字化的。在本文中,我们研究了通过使用激光注入对抗性点云来物理欺骗基于lidar的3D目标检测的可能性。首先,我们开发了一种激光收发器,可以注入多达4200个点,这是以前工作的20倍,并且可以测量受害激光雷达的扫描周期来调度欺骗激光信号。通过设计一种将点云坐标转换为控制信号的控制信号方法和一种结合激光雷达物理约束和攻击能力的对抗性点云优化方法,我们成功地将具有所需点云形状的欺骗点云物理注入到受害激光雷达中。我们可以发起四种类型的攻击,即:朴素隐藏、基于记录的创建、基于优化的隐藏和基于优化的创建。大量的实验证明了我们的攻击对两个商用激光雷达和三个探测器的有效性。我们还讨论了传感器和AV系统级别的防御策略。
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