Collision Free
Collision-free path planning focuses on generating trajectories for robots and autonomous systems that avoid collisions with obstacles and other agents, optimizing for factors like speed, energy efficiency, and smoothness. Current research emphasizes efficient algorithms like A*, Model Predictive Control (MPC), and various sampling-based methods (e.g., RRT*), often enhanced by machine learning techniques such as reinforcement learning and diffusion models to handle complex environments and dynamic obstacles. These advancements are crucial for enabling safe and efficient operation of robots in diverse applications, from warehouse automation and autonomous driving to multi-robot collaboration and aerial navigation.
Papers
Robust MADER: Decentralized Multiagent Trajectory Planner Robust to Communication Delay in Dynamic Environments
Kota Kondo, Reinaldo Figueroa, Juan Rached, Jesus Tordesillas, Parker C. Lusk, Jonathan P. How
Communication-Critical Planning via Multi-Agent Trajectory Exchange
Nathaniel Moore Glaser, Zsolt Kira
Probabilistic Trajectory Planning for Static and Interaction-aware Dynamic Obstacle Avoidance
Baskın Şenbaşlar, Gaurav S. Sukhatme
3D Trajectory Planning for UAV-based Search Missions: An Integrated Assessment and Search Planning Approach
Savvas Papaioannou, Panayiotis Kolios, Theocharis Theocharides, Christos G. Panayiotou, Marios M. Polycarpou
Certified Polyhedral Decompositions of Collision-Free Configuration Space
Hongkai Dai, Alexandre Amice, Peter Werner, Annan Zhang, Russ Tedrake
Improving safety in physical human-robot collaboration via deep metric learning
Maryam Rezayati, Grammatiki Zanni, Ying Zaoshi, Davide Scaramuzza, Hans Wernher van de Venn