4.7 Article

Adversarial Evaluation of Autonomous Vehicles in Lane-Change Scenarios

Journal

IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS
Volume 23, Issue 8, Pages 10333-10342

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2021.3091477

Keywords

Autonomous vehicles; Accidents; Databases; Reinforcement learning; Training; Testing; Safety; Autonomous vehicle; vehicle evaluation; reinforcement learning; unsupervised learning

Funding

  1. National Key Research and Development Program of China [2018YFB0105101]
  2. Technological Innovation Project for New Energy and Intelligent Networked Automobile Industry of Anhui Province [JAC2019030105]
  3. National Natural Science Foundation of China [52002211]

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This paper proposes an adaptive evaluation framework to efficiently evaluate autonomous vehicles in adversarial environments generated by deep reinforcement learning. By using ensemble models and nonparametric Bayesian methods to achieve diversity and cluster adversarial policies. Results show that the proposed method significantly degrades the performance of tested vehicles and can be used to infer weaknesses.
Autonomous vehicles must be comprehensively evaluated before deployed in cities and highways. However, most existing evaluation approaches for autonomous vehicles are static and lack adaptability, so they are usually inefficient in generating challenging scenarios for tested vehicles. In this paper, we propose an adaptive evaluation framework to efficiently evaluate autonomous vehicles in adversarial environments generated by deep reinforcement learning. Considering the multimodal nature of dangerous scenarios, we use ensemble models to represent different local optimums for diversity. We then utilize a nonparametric Bayesian method to cluster the adversarial policies. The proposed method is validated in a typical lane-change scenario that involves frequent interactions between the ego vehicle and the surrounding vehicles. Results show that the adversarial scenarios generated by our method significantly degrade the performance of the tested vehicles. We also illustrate different patterns of generated adversarial environments, which can be used to infer the weaknesses of the tested vehicles.

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