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
Autonomous Navigation and Collision Avoidance for Mobile Robots: Classification and Review
Marcus Vinicius Leal de Carvalho, Roberto Simoni, Leopoldo Yoshioka
Dynamic Neural Potential Field: Online Trajectory Optimization in Presence of Moving Obstacles
Aleksey Staroverov, Muhammad Alhaddad, Aditya Narendra, Konstantin Mironov, Aleksandr Panov
Decentralized Nonlinear Model Predictive Control for Safe Collision Avoidance in Quadrotor Teams with Limited Detection Range
Manohari Goarin, Guanrui Li, Alessandro Saviolo, Giuseppe Loianno
On-orbit Servicing for Spacecraft Collision Avoidance With Autonomous Decision Making
Susmitha Patnala, Adam Abdin
Collision-free time-optimal path parameterization for multi-robot teams
Katherine Mao, Igor Spasojevic, Malakhi Hopkins, M. Ani Hsieh, Vijay Kumar
Dynamic Obstacle Avoidance through Uncertainty-Based Adaptive Planning with Diffusion
Vineet Punyamoorty, Pascal Jutras-Dubé, Ruqi Zhang, Vaneet Aggarwal, Damon Conover, Aniket Bera
PRESTO: Fast motion planning using diffusion models based on key-configuration environment representation
Mingyo Seo, Yoonyoung Cho, Yoonchang Sung, Peter Stone, Yuke Zhu, Beomjoon Kim
Intent Prediction-Driven Model Predictive Control for UAV Planning and Navigation in Dynamic Environments
Zhefan Xu, Hanyu Jin, Xinming Han, Haoyu Shen, Kenji Shimada