S-RAF: A Simulation-Based Robustness Assessment Framework for Responsible Autonomous Driving

Authors

  • Daniel Omeiza University of Oxford
  • Pratik Somaiya University of Oxford
  • Jo-Ann Pattison University of Leeds
  • Carolyn Ten-Holter University of Oxford
  • Marina Jirotka University of Oxford
  • Jack Stilgoe University College London
  • Lars Kunze University of Oxford University of the West of England

DOI:

https://doi.org/10.1609/aaaiss.v4i1.31776

Abstract

As artificial intelligence (AI) technology advances, ensuring the robustness and safety of AI-driven systems has become paramount. However, varying perceptions of robustness among AI developers create misaligned evaluation metrics, complicating the assessment and certification of safety-critical and complex AI systems such as autonomous driving (AD) agents. To address this challenge, we introduce Simulation-Based Robustness Assessment Framework (S-RAF) for autonomous driving. S-RAF leverages the CARLA Driving simulator to rigorously assess AD agents across diverse conditions, including faulty sensors, environmental changes, and complex traffic situations. By quantifying robustness and its relationship with other safety-critical factors, such as carbon emissions, S-RAF aids developers and stakeholders in building safe and responsible driving agents, and streamlining safety certification processes. Furthermore, S-RAF offers significant advantages, such as reduced testing costs, and the ability to explore edge cases that may be unsafe to test in the real world.

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Published

2024-11-08

How to Cite

Omeiza, D., Somaiya, P., Pattison, J.-A., Ten-Holter, C., Jirotka, M., Stilgoe, J., & Kunze, L. (2024). S-RAF: A Simulation-Based Robustness Assessment Framework for Responsible Autonomous Driving. Proceedings of the AAAI Symposium Series, 4(1), 89–96. https://doi.org/10.1609/aaaiss.v4i1.31776

Issue

Section

AI Trustworthiness and Risk Assessment for Challenging Contexts (ATRACC)