Motion Planning
Motion planning focuses on generating safe and efficient trajectories for robots and autonomous systems to navigate complex environments and achieve specified goals. Current research emphasizes improving the efficiency of sampling-based methods through techniques like message-passing Monte Carlo and leveraging vision-language models and reinforcement learning for higher-level task planning and decision-making in dynamic scenarios. These advancements are crucial for enabling robots to perform increasingly complex tasks in real-world settings, impacting fields such as robotics, autonomous driving, and multi-agent systems.
Papers
NavTopo: Leveraging Topological Maps For Autonomous Navigation Of a Mobile Robot
Kirill Muravyev, Konstantin Yakovlev
Towards Local Minima-free Robotic Navigation: Model Predictive Path Integral Control via Repulsive Potential Augmentation
Takahiro Fuke, Masafumi Endo, Kohei Honda, Genya Ishigami
Motion Planning for Automata-based Objectives using Efficient Gradient-based Methods
Anand Balakrishnan, Merve Atasever, Jyotirmoy V. Deshmukh
Conformalized Reachable Sets for Obstacle Avoidance With Spheres
Yongseok Kwon, Jonathan Michaux, Seth Isaacson, Bohao Zhang, Matthew Ejakov, Katherine A. Skinner, Ram Vasudevan
Physics-informed Neural Mapping and Motion Planning in Unknown Environments
Yuchen Liu, Ruiqi Ni, Ahmed H. Qureshi
Model Predictive Control for Optimal Motion Planning of Unmanned Aerial Vehicles
Duy-Nam Bui, Thu Hang Khuat, Manh Duong Phung, Thuan-Hoang Tran, Dong LT Tran