AI RESEARCH

Real-Time Evaluation of Autonomous Systems under Adversarial Attacks

arXiv CS.AI

ArXi:2605.03491v1 Announce Type: new Most evaluations of autonomous driving policies under adversarial conditions are conducted in simulation, due to cost efficiency and the absence of physical risk. However, purely virtual testing fails to capture structural inconsistencies, supervision constraints, and state-representation effects that arise in real-world data and fundamentally shape policy robustness. This work presents an offline trajectory-learning and adversarial robustness evaluation framework grounded in real-world intersection driving data.