Litcius/Paper detail

Motion Planning for Autonomous Driving: The State of the Art and Future Perspectives

Siyu Teng, Xuemin Hu, Peng Deng, Bai Li, Yuchen Li, Yunfeng Ai, Dongsheng Yang, Lingxi Li, Zhe Xuanyuan, Fenghua Zhu, Long Chen

2023IEEE Transactions on Intelligent Vehicles549 citationsDOI

Abstract

Intelligent vehicles (IVs) have gained worldwide attention due to their increased convenience, safety advantages, and potential commercial value. Despite predictions of commercial deployment by 2025, implementation remains limited to small-scale validation, with precise tracking controllers and motion planners being essential prerequisites for IVs. This article reviews state-of-the-art motion planning methods for IVs, including pipeline planning and end-to-end planning methods. The study examines the selection, expansion, and optimization operations in a pipeline method, while it investigates training approaches and validation scenarios for driving tasks in end-to-end methods. Experimental platforms are reviewed to assist readers in choosing suitable training and validation strategies. A side-by-side comparison of the methods is provided to highlight their strengths and limitations, aiding system-level design choices. Current challenges and future perspectives are also discussed in this survey.

Topics & Concepts

Software deploymentPipeline (software)Computer scienceScale (ratio)Motion (physics)Systems engineeringMotion planningRisk analysis (engineering)EngineeringArtificial intelligenceRobotSoftware engineeringBusinessProgramming languagePhysicsQuantum mechanicsAutonomous Vehicle Technology and SafetyRobotic Path Planning AlgorithmsHuman-Automation Interaction and Safety