Autonomous Navigation
Autonomous navigation research aims to enable robots and vehicles to navigate complex environments without human intervention, focusing on safe and efficient path planning and execution. Current efforts concentrate on improving perception through sensor fusion (e.g., LiDAR, cameras, sonar) and leveraging machine learning techniques, particularly deep reinforcement learning and neural networks, for decision-making and control, often incorporating prior maps or learned models of environment dynamics. This field is crucial for advancing robotics, autonomous driving, and space exploration, with applications ranging from warehouse logistics and agricultural automation to underwater exploration and planetary landing.
Papers
URA*: Uncertainty-aware Path Planning using Image-based Aerial-to-Ground Traversability Estimation for Off-road Environments
Charles Moore, Shaswata Mitra, Nisha Pillai, Marc Moore, Sudip Mittal, Cindy Bethel, Jingdao Chen
UIVNAV: Underwater Information-driven Vision-based Navigation via Imitation Learning
Xiaomin Lin, Nare Karapetyan, Kaustubh Joshi, Tianchen Liu, Nikhil Chopra, Miao Yu, Pratap Tokekar, Yiannis Aloimonos
PRIEST: Projection Guided Sampling-Based Optimization For Autonomous Navigation
Fatemeh Rastgar, Houman Masnavi, Basant Sharma, Alvo Aabloo, Jan Swevers, Arun Kumar Singh
CoverNav: Cover Following Navigation Planning in Unstructured Outdoor Environment with Deep Reinforcement Learning
Jumman Hossain, Abu-Zaher Faridee, Nirmalya Roy, Anjan Basak, Derrik E. Asher
Autonomous Guidance Navigation and Control of the VISORS Formation-Flying Mission
Tommaso Guffanti, Toby Bell, Samuel Y. W. Low, Mason Murray-Cooper, Simone D'Amico