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
A Survey of Optimization-based Task and Motion Planning: From Classical To Learning Approaches
Zhigen Zhao, Shuo Cheng, Yan Ding, Ziyi Zhou, Shiqi Zhang, Danfei Xu, Ye Zhao
Leveraging Swarm Intelligence to Drive Autonomously: A Particle Swarm Optimization based Approach to Motion Planning
Sven Ochs, Jens Doll, Marc Heinrich, Philip Schörner, Sebastian Klemm, Marc René Zofka, J. Marius Zöllner
IKSPARK: An Inverse Kinematics Solver using Semidefinite Relaxation and Rank Minimization
Liangting Wu, Roberto Tron
AGRNav: Efficient and Energy-Saving Autonomous Navigation for Air-Ground Robots in Occlusion-Prone Environments
Junming Wang, Zekai Sun, Xiuxian Guan, Tianxiang Shen, Zongyuan Zhang, Tianyang Duan, Dong Huang, Shixiong Zhao, Heming Cui
LLM3:Large Language Model-based Task and Motion Planning with Motion Failure Reasoning
Shu Wang, Muzhi Han, Ziyuan Jiao, Zeyu Zhang, Ying Nian Wu, Song-Chun Zhu, Hangxin Liu