Trajectory prediction is an integral component of modern autonomous systems as it allows for envisioning future intentions of nearby moving agents. Due to the lack of other agents' dynamics and control policies, deep neural network (DNN) models are often employed for trajectory forecasting tasks. Although there exists an extensive literature on improving the accuracy of these models, there is a very limited number of works studying their robustness against adversarially crafted input trajectories. To bridge this gap, in this paper, we propose a targeted adversarial attack against DNN models for trajectory forecasting tasks. We call the proposed attack TA4TP for Targeted adversarial Attack for Trajectory Prediction. Our approach generates adversarial input trajectories that are capable of fooling DNN models into predicting user-specified target/desired trajectories. Our attack relies on solving a nonlinear constrained optimization problem where the objective function captures the deviation of the predicted trajectory from a target one while the constraints model physical requirements that the adversarial input should satisfy. The latter ensures that the inputs look natural and they are safe to execute (e.g., they are close to nominal inputs and away from obstacles). We demonstrate the effectiveness of TA4TP on two state-of-the-art DNN models and two datasets. To the best of our knowledge, we propose the first targeted adversarial attack against DNN models used for trajectory forecasting.
翻译:轨迹预测是现代自主系统的一个组成部分,因为它可以设想附近移动物剂的未来意图。由于缺乏其他物剂的动态和控制政策,因此往往使用深神经网络模型来进行轨迹预测任务。虽然有关于提高这些模型准确性的广泛文献,但研究这些模型对对抗性编织输入轨迹的稳健性的工作数量非常有限。为了缩小这一差距,我们在本文件中提议对DNN的轨迹预测任务模型进行有针对性的对立攻击。我们称之为拟议攻击TA4TP,用于对轨迹预测进行定向对抗性攻击。我们的方法产生对抗性输入轨迹,能够欺骗DNNN模型预测用户指定的目标/理想轨迹。我们的攻击依赖于解决一个非线性限制优化问题,因为目标功能能够捕捉到预测轨迹轨迹偏离目标之一,而对抗性投入应该满足的模型物理要求。后者确保输入看起来自然,而且它们可以安全执行(例如,我们的方法产生对抗性对TNNNW的轨迹模型,这是我们两个标定目标的轨迹上的数据,我们从TTP的轨道上展示了两个目标模型。