ROSYFeb 23, 2021

An Interaction-aware Evaluation Method for Highly Automated Vehicles

arXiv:2102.11462v11 citations
Originality Incremental advance
AI Analysis

This addresses the need for rigorous safety verification in autonomous driving, though it is incremental by focusing on specific scenarios like highway merging.

The paper tackles the problem of evaluating the safety of highly automated vehicles in interactive driving scenarios by proposing an interaction-aware framework that models other vehicles as game-theoretic agents, achieving better coverage of failure modes compared to existing approaches.

It is important to build a rigorous verification and validation (V&V) process to evaluate the safety of highly automated vehicles (HAVs) before their wide deployment on public roads. In this paper, we propose an interaction-aware framework for HAV safety evaluation which is suitable for some highly-interactive driving scenarios including highway merging, roundabout entering, etc. Contrary to existing approaches where the primary other vehicle (POV) takes predetermined maneuvers, we model the POV as a game-theoretic agent. To capture a wide variety of interactions between the POV and the vehicle under test (VUT), we characterize the interactive behavior using level-k game theory and social value orientation and train a diverse set of POVs using reinforcement learning. Moreover, we propose an adaptive test case sampling scheme based on the Gaussian process regression technique to generate customized and diverse challenging cases. The highway merging is used as the example scenario. We found the proposed method is able to capture a wide range of POV behaviors and achieve better coverage of the failure modes of the VUT compared with other evaluation approaches.

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