Multi-Object Tracking (MOT) is a critical task in computer vision, with applications ranging from surveillance systems to autonomous driving. However, threats to MOT algorithms have yet been widely studied. In particular, incorrect association between the tracked objects and their assigned IDs can lead to severe consequences, such as wrong trajectory predictions. Previous attacks against MOT either focused on hijacking the trackers of individual objects, or manipulating the tracker IDs in MOT by attacking the integrated object detection (OD) module in the digital domain, which are model-specific, non-robust, and only able to affect specific samples in offline datasets. In this paper, we present AdvTraj, the first online and physical ID-manipulation attack against tracking-by-detection MOT, in which an attacker uses adversarial trajectories to transfer its ID to a targeted object to confuse the tracking system, without attacking OD. Our simulation results in CARLA show that AdvTraj can fool ID assignments with 100% success rate in various scenarios for white-box attacks against SORT, which also have high attack transferability (up to 93% attack success rate) against state-of-the-art (SOTA) MOT algorithms due to their common design principles. We characterize the patterns of trajectories generated by AdvTraj and propose two universal adversarial maneuvers that can be performed by a human walker/driver in daily scenarios. Our work reveals under-explored weaknesses in the object association phase of SOTA MOT systems, and provides insights into enhancing the robustness of such systems.
翻译:多目标跟踪是计算机视觉中的关键任务,其应用范围涵盖监控系统至自动驾驶。然而,针对多目标跟踪算法的安全威胁尚未得到广泛研究。具体而言,跟踪对象与其分配身份之间的错误关联可能导致严重后果,例如轨迹预测错误。以往针对多目标跟踪的攻击要么侧重于劫持单个对象的跟踪器,要么通过在数字域攻击集成的目标检测模块来操纵跟踪器身份,这些方法存在模型依赖性、鲁棒性不足且仅能影响离线数据集中特定样本的局限性。本文提出AdvTraj——首个针对检测跟踪式多目标跟踪的在线物理身份操纵攻击,攻击者通过对抗轨迹将自身身份转移至目标对象以干扰跟踪系统,且无需攻击目标检测模块。在CARLA仿真环境中的实验表明,AdvTraj对SORT算法进行白盒攻击时,在各种场景下均能实现100%的身份分配欺骗成功率;由于先进多目标跟踪算法共享设计原理,该攻击还表现出高迁移性(对前沿算法的攻击成功率最高达93%)。我们系统分析了AdvTraj生成的轨迹特征,并提出两种可由行人/驾驶者在日常场景中执行的通用对抗机动策略。本研究揭示了当前先进多目标跟踪系统在目标关联阶段尚未被充分探索的脆弱性,并为增强此类系统的鲁棒性提供了理论依据。