Road Traffic Law Adaptive Decision-making for Self-Driving Vehicles
Jiaxin Liu, Wenhui Zhou, Hong Wang, Zhong Cao, Wenhao Yu, Chengxiang, Zhao, Ding Zhao, Diange Yang, Jun Li

TL;DR
This paper introduces a reinforcement learning-based decision-making framework for self-driving cars that adapts to changing traffic laws by translating natural language laws into logical expressions and re-planning trajectories to ensure compliance.
Contribution
It presents a novel law-adaptive decision-making method that integrates natural language traffic laws with reinforcement learning and trajectory re-planning for autonomous vehicles.
Findings
Effective compliance with new traffic laws demonstrated in simulations.
The system can adapt to law updates without manual reprogramming.
Improved safety and legality in autonomous driving scenarios.
Abstract
Self-driving vehicles have their own intelligence to drive on open roads. However, vehicle managers, e.g., government or industrial companies, still need a way to tell these self-driving vehicles what behaviors are encouraged or forbidden. Unlike human drivers, current self-driving vehicles cannot understand the traffic laws, thus rely on the programmers manually writing the corresponding principles into the driving systems. It would be less efficient and hard to adapt some temporary traffic laws, especially when the vehicles use data-driven decision-making algorithms. Besides, current self-driving vehicle systems rarely take traffic law modification into consideration. This work aims to design a road traffic law adaptive decision-making method. The decision-making algorithm is designed based on reinforcement learning, in which the traffic rules are usually implicitly coded in deep…
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Taxonomy
TopicsTraffic control and management · Transportation and Mobility Innovations · Autonomous Vehicle Technology and Safety
