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
Machine Learning Optimized Orthogonal Basis Piecewise Polynomial Approximation
Hannes Waclawek, Stefan Huber
APACE: Agile and Perception-Aware Trajectory Generation for Quadrotor Flights
Xinyi Chen, Yichen Zhang, Boyu Zhou, Shaojie Shen
Safe Planning through Incremental Decomposition of Signal Temporal Logic Specifications
Parv Kapoor, Eunsuk Kang, Romulo Meira-Goes
SpaceOctopus: An Octopus-inspired Motion Planning Framework for Multi-arm Space Robot
Wenbo Zhao, Shengjie Wang, Yixuan Fan, Yang Gao, Tao Zhang
Multi-Fidelity Reinforcement Learning for Time-Optimal Quadrotor Re-planning
Gilhyun Ryou, Geoffrey Wang, Sertac Karaman