A Survey of Deep RL and IL for Autonomous Driving Policy Learning
Zeyu Zhu, Huijing Zhao

TL;DR
This survey comprehensively reviews how deep reinforcement learning and imitation learning are applied to autonomous driving policy learning, covering system integration, task formulation, and safety challenges.
Contribution
First survey to analyze AD policy learning via DRL and DIL from system, task, and problem perspectives, providing a taxonomy and detailed review of models and challenges.
Findings
Identifies five modes of integrating DRL/DIL into AD systems.
Reviews various model designs for specific AD tasks.
Discusses how DRL/DIL address safety, interaction, and uncertainty issues.
Abstract
Autonomous driving (AD) agents generate driving policies based on online perception results, which are obtained at multiple levels of abstraction, e.g., behavior planning, motion planning and control. Driving policies are crucial to the realization of safe, efficient and harmonious driving behaviors, where AD agents still face substantial challenges in complex scenarios. Due to their successful application in fields such as robotics and video games, the use of deep reinforcement learning (DRL) and deep imitation learning (DIL) techniques to derive AD policies have witnessed vast research efforts in recent years. This paper is a comprehensive survey of this body of work, which is conducted at three levels: First, a taxonomy of the literature studies is constructed from the system perspective, among which five modes of integration of DRL/DIL models into an AD architecture are identified.…
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