ANTI-CARLA: An Adversarial Testing Framework for Autonomous Vehicles in CARLA
Shreyas Ramakrishna, Baiting Luo, Christopher Kuhn, Gabor Karsai, and, Abhishek Dubey

TL;DR
ANTI-CARLA is an automated adversarial testing framework for CARLA that identifies failure scenarios in autonomous driving systems by simulating challenging weather and sensor fault conditions.
Contribution
It introduces a comprehensive adversarial testing framework for CARLA, enabling systematic discovery of failure cases in autonomous driving pipelines.
Findings
Successfully identified failure scenarios despite high system accuracy
Automated search efficiently finds adversarial conditions
Extends CARLA with adversarial testing capabilities
Abstract
Despite recent advances in autonomous driving systems, accidents such as the fatal Uber crash in 2018 show these systems are still susceptible to edge cases. Such systems must be thoroughly tested and validated before being deployed in the real world to avoid such events. Testing in open-world scenarios can be difficult, time-consuming, and expensive. These challenges can be addressed by using driving simulators such as CARLA instead. A key part of such tests is adversarial testing, in which the goal is to find scenarios that lead to failures of the given system. While several independent efforts in testing have been made, a well-established testing framework that enables adversarial testing has yet to be made available for CARLA. We therefore propose ANTI-CARLA, an automated testing framework in CARLA for simulating adversarial weather conditions (e.g., heavy rain) and sensor faults…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Autonomous Vehicle Technology and Safety · Anomaly Detection Techniques and Applications
MethodsEntropy Regularization · Proximal Policy Optimization · Test · CARLA: An Open Urban Driving Simulator
