Trajectory Planning
Trajectory planning focuses on generating optimal paths for robots and autonomous vehicles, considering factors like speed, acceleration, and collision avoidance. Current research emphasizes robust methods handling uncertainties in dynamic environments, employing techniques such as Partially Observable Markov Decision Processes (POMDPs), Bayesian games, and neural networks (including transformers and graph neural networks) for improved prediction and decision-making. These advancements are crucial for enhancing the safety, efficiency, and reliability of autonomous systems across diverse applications, from autonomous driving and multi-robot coordination to teleoperated space manipulators and advanced robotics.
Papers
Integrating Higher-Order Dynamics and Roadway-Compliance into Constrained ILQR-based Trajectory Planning for Autonomous Vehicles
Hanxiang Li, Jiaqiao Zhang, Sheng Zhu, Dongjian Tang, Donghao Xu
Perception-and-Energy-aware Motion Planning for UAV using Learning-based Model under Heteroscedastic Uncertainty
Reiya Takemura, Genya Ishigami
Fast Safe Rectangular Corridor-based Online AGV Trajectory Optimization with Obstacle Avoidance
Shaoqiang Liang, Songyuan Fa, Yiqun Li
Dubins Curve Based Continuous-Curvature Trajectory Planning for Autonomous Mobile Robots
Xuanhao Huang, Chao-Bo Yan
Asynchronous Spatial-Temporal Allocation for Trajectory Planning of Heterogeneous Multi-Agent Systems
Yuda Chen, Haoze Dong, Zhongkui Li
Path Planning with Potential Field-Based Obstacle Avoidance in a 3D Environment by an Unmanned Aerial Vehicle
Ana Batinovic, Jurica Goricanec, Lovro Markovic, Stjepan Bogdan
Action and Trajectory Planning for Urban Autonomous Driving with Hierarchical Reinforcement Learning
Xinyang Lu, Flint Xiaofeng Fan, Tianying Wang