Intelligent vehicles and wheeled robots are revolutionizing transportation and logistics, offering promising advancements in efficiency and safety. A critical function of these autonomous systems is trajectory planning—the process of generating a safe, comfortable, and optimized spatio-temporal path for a vehicle or robot to follow. While traditional autonomous driving focuses on individual vehicles, cooperative trajectory planning involves simultaneously generating trajectories for an entire fleet of intelligent vehicles or robots, introducing a higher level of complexity.
The aim of this competition is to test the capabilities of state-of-the-art cooperative trajectory planning methods and foster innovation among new researchers in this research field. Cooperative trajectory planning presents unique challenges, particularly when the number of vehicles in a group increases. As the swarm grows, the complexity of collision-avoidance constraints rises geometrically, making it difficult to scale solutions effectively. Additionally, when multiple vehicles navigate around each other, numerous topological scenarios, known as homotopy classes, would arise. Selecting an inefficient homotopy class leads to local optima, resulting in suboptimal and low-efficiency solutions. The intricacies of cooperative trajectory planning, especially in cluttered environments, present an open research problem that demands further exploration. This competition aims to push the boundaries of what is possible and inspire researchers to tackle these challenges head-on, advancing the state of the art in cooperative multi-vehicle systems.