English

Generating and Explaining Corner Cases Using Learnt Probabilistic Lane Graphs

Artificial Intelligence 2024-03-14 v2 Robotics

Abstract

Validating the safety of Autonomous Vehicles (AVs) operating in open-ended, dynamic environments is challenging as vehicles will eventually encounter safety-critical situations for which there is not representative training data. By increasing the coverage of different road and traffic conditions and by including corner cases in simulation-based scenario testing, the safety of AVs can be improved. However, the creation of corner case scenarios including multiple agents is non-trivial. Our approach allows engineers to generate novel, realistic corner cases based on historic traffic data and to explain why situations were safety-critical. In this paper, we introduce Probabilistic Lane Graphs (PLGs) to describe a finite set of lane positions and directions in which vehicles might travel. The structure of PLGs is learnt directly from spatio-temporal traffic data. The graph model represents the actions of the drivers in response to a given state in the form of a probabilistic policy. We use reinforcement learning techniques to modify this policy and to generate realistic and explainable corner case scenarios which can be used for assessing the safety of AVs.

Keywords

Cite

@article{arxiv.2308.13658,
  title  = {Generating and Explaining Corner Cases Using Learnt Probabilistic Lane Graphs},
  author = {Enrik Maci and Rhys Howard and Lars Kunze},
  journal= {arXiv preprint arXiv:2308.13658},
  year   = {2024}
}

Comments

8 Pages, 3 Figures, 1 Table, Published in the Proceedings of the 26th IEEE International Conference on Intelligent Transport Systems (2023), Final submission version with added IEEE copyright notice

R2 v1 2026-06-28T12:04:44.131Z