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
IR-STP: Enhancing Autonomous Driving with Interaction Reasoning in Spatio-Temporal Planning
Yingbing Chen, Jie Cheng, Lu Gan, Sheng Wang, Hongji Liu, Xiaodong Mei, Ming Liu
Safe-VLN: Collision Avoidance for Vision-and-Language Navigation of Autonomous Robots Operating in Continuous Environments
Lu Yue, Dongliang Zhou, Liang Xie, Feitian Zhang, Ye Yan, Erwei Yin
Interpretable and Flexible Target-Conditioned Neural Planners For Autonomous Vehicles
Haolan Liu, Jishen Zhao, Liangjun Zhang
Collision Avoidance and Navigation for a Quadrotor Swarm Using End-to-end Deep Reinforcement Learning
Zhehui Huang, Zhaojing Yang, Rahul Krupani, Baskın Şenbaşlar, Sumeet Batra, Gaurav S. Sukhatme