Feasible Trajectory
Feasible trajectory planning focuses on generating paths for robots and autonomous systems that are both collision-free and dynamically achievable, considering constraints like actuator limits and environmental factors. Current research emphasizes efficient algorithms, such as model predictive control (MPC), particle swarm optimization, and graph search methods often combined with trajectory optimization techniques, to handle complex scenarios and high-dimensional state spaces. These advancements are crucial for enabling safe and efficient operation of robots in real-world applications, ranging from autonomous driving and aerial robotics to humanoid locomotion and industrial manipulation.
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
Traj-LO: In Defense of LiDAR-Only Odometry Using an Effective Continuous-Time Trajectory
Xin Zheng, Jianke Zhu