Collision Avoidance
Collision avoidance research focuses on enabling safe and efficient navigation for multiple agents, such as robots, UAVs, and spacecraft, in dynamic environments. Current efforts concentrate on developing robust control strategies, often employing model predictive control (MPC) frameworks integrated with control barrier functions (CBFs) or reinforcement learning (RL) algorithms, sometimes enhanced by techniques like diffusion models or neural networks for improved perception and planning. These advancements are crucial for various applications, including autonomous driving, multi-robot coordination, and space operations, improving safety and efficiency in increasingly complex systems. The field is also exploring distributed control methods and human-robot collaboration to address challenges in communication limitations and shared autonomy.
Papers
Learning Hyperplanes for Multi-Agent Collision Avoidance in Space
Fernando Palafox, Yue Yu, David Fridovich-Keil
Edge Accelerated Robot Navigation With Collaborative Motion Planning
Guoliang Li, Ruihua Han, Shuai Wang, Fei Gao, Yonina C. Eldar, Chengzhong Xu
Probability of Collision of satellites and space debris for short-term encounters: Rederivation and fast-to-compute upper and lower bounds
Ricardo Ferreira, Cláudia Soares, Marta Guimarães
Segmentation of Drone Collision Hazards in Airborne RADAR Point Clouds Using PointNet
Hector Arroyo, Paul Kier, Dylan Angus, Santiago Matalonga, Svetlozar Georgiev, Mehdi Goli, Gerard Dooly, James Riordan
Collision Avoidance using Iterative Dynamic and Nonlinear Programming with Adaptive Grid Refinements
Rebecca Richter, Alberto De Marchi, Matthias Gerdts
Imitation Learning based Alternative Multi-Agent Proximal Policy Optimization for Well-Formed Swarm-Oriented Pursuit Avoidance
Sizhao Li, Yuming Xiang, Rongpeng Li, Zhifeng Zhao, Honggang Zhang
Reinforcement Learning for Safety Testing: Lessons from A Mobile Robot Case Study
Tom P. Huck, Martin Kaiser, Constantin Cronrath, Bengt Lennartson, Torsten Kröger, Tamim Asfour