Robot Navigation
Robot navigation research focuses on enabling robots to move safely and efficiently through various environments, often guided by human instructions or pre-defined goals. Current efforts concentrate on improving robustness and adaptability through techniques like integrating vision-language models (VLMs) for semantic understanding, employing reinforcement learning (RL) for dynamic environments, and developing hierarchical planning methods to handle complex, long-horizon tasks. These advancements are crucial for deploying robots in real-world settings, such as healthcare, logistics, and exploration, where safe and efficient navigation is paramount.
Papers
Scalable Networked Feature Selection with Randomized Algorithm for Robot Navigation
Vivek Pandey, Arash Amini, Guangyi Liu, Ufuk Topcu, Qiyu Sun, Kostas Daniilidis, Nader Motee
Robot Navigation in Unknown and Cluttered Workspace with Dynamical System Modulation in Starshaped Roadmap
Kai Chen, Haichao Liu, Yulin Li, Jianghua Duan, Lei Zhu, Jun Ma