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
STAP: Sequencing Task-Agnostic Policies
Christopher Agia, Toki Migimatsu, Jiajun Wu, Jeannette Bohg
Differentiable Constrained Imitation Learning for Robot Motion Planning and Control
Christopher Diehl, Janis Adamek, Martin Krüger, Frank Hoffmann, Torsten Bertram
Motion Primitives Based Kinodynamic RRT for Autonomous Vehicle Navigation in Complex Environments
Shubham Kedia, Sambhu Harimanas Karumanchi
Evaluating Guiding Spaces for Motion Planning
Amnon Attali, Stav Ashur, Isaac Burton Love, Courtney McBeth, James Motes, Diane Uwacu, Marco Morales, Nancy M. Amato
Long Horizon Planning through Contact using Discrete Search and Continuous Optimization
Ramkumar Natarajan, Garrison L. H. Johnston, Nabil Simaan, Maxim Likhachev, Howie Choset
Learning-based Motion Planning in Dynamic Environments Using GNNs and Temporal Encoding
Ruipeng Zhang, Chenning Yu, Jingkai Chen, Chuchu Fan, Sicun Gao