Deep learning-based 3D object detectors have made significant progress in recent years and have been deployed in a wide range of applications. It is crucial to understand the robustness of detectors against adversarial attacks when employing detectors in security-critical applications. In this paper, we make the first attempt to conduct a thorough evaluation and analysis of the robustness of 3D detectors under adversarial attacks. Specifically, we first extend three kinds of adversarial attacks to the 3D object detection task to benchmark the robustness of state-of-the-art 3D object detectors against attacks on KITTI and Waymo datasets, subsequently followed by the analysis of the relationship between robustness and properties of detectors. Then, we explore the transferability of cross-model, cross-task, and cross-data attacks. We finally conduct comprehensive experiments of defense for 3D detectors, demonstrating that simple transformations like flipping are of little help in improving robustness when the strategy of transformation imposed on input point cloud data is exposed to attackers. Our findings will facilitate investigations in understanding and defending the adversarial attacks against 3D object detectors to advance this field.
翻译:近些年来,基于深层次学习的三维天体探测器取得了显著进展,并已广泛应用。在使用安全关键应用程序的探测器时,了解对抗性攻击探测器的稳健性至关重要。在本文件中,我们首先试图对3D探测器在对抗性攻击下的稳健性进行全面评估和分析。具体地说,我们首先将三种对抗性攻击扩大到三维天体探测任务,以衡量最先进的三维天体探测器对KITTI和Waymo数据集攻击的稳性,随后分析探测器的稳性与性质之间的关系。然后,我们探索跨模型、交叉任务和交叉数据攻击的可转移性。我们最后对三维体体探测器进行全面的防御实验,表明在输入点云数据转型战略暴露给攻击者时,像翻转这样的简单转变无助于加强稳性。我们的调查结果将有助于了解和维护对三维天体物体探测器的对抗性攻击,以推进这个领域。