Affiliation:
1. School of Automotive Studies, Tongji University, Shanghai 201804, China
Abstract
Autonomous vehicles are rapidly advancing and have the potential to revolutionize transportation in the future. This paper primarily focuses on vehicle motion trajectory planning algorithms, examining the methods for estimating collision risks based on sensed environmental information and approaches for achieving user-aligned trajectory planning results. It investigates the different categories of planning algorithms within the scope of local trajectory planning applications for autonomous driving, discussing and differentiating their properties in detail through a review of the recent studies. The risk estimation methods are classified and introduced based on their descriptions of the sensed collision risks in traffic environments and their integration with trajectory planning algorithms. Additionally, various user experience-oriented methods, which utilize human data to enhance the trajectory planning performance and generate human-like trajectories, are explored. The paper provides comparative analyses of these algorithms and methods from different perspectives, revealing the interconnections between these topics. The current challenges and future prospects of the trajectory planning tasks in autonomous vehicles are also discussed.
Reference226 articles.
1. Bohm, F., and Häger, K. (2015). Introduction of Autonomous Vehicles in the Swedish Traffic System: Effects and Changes Due to the New Self-Driving Car Technology, Uppsala University.
2. The Safety Potential of Lane Keeping Assistance and Possible Actions to Improve the Potential;Utriainen;IEEE Trans. Intell. Veh.,2020
3. Autonomous driving system: A comprehensive survey;Zhao;Expert Syst. Appl.,2024
4. Social Interactions for Autonomous Driving: A Review and Perspectives;Wang;Found. Trends® Robot.,2022
5. A Comprehensive Review on Limitations of Autonomous Driving and Its Impact on Accidents and Collisions;Chougule;IEEE Open J. Veh. Technol.,2024