Road Environment
Road environment research focuses on enabling robust autonomous navigation in unstructured off-road terrains, addressing challenges like varied terrain types, limited visibility, and unpredictable vehicle-terrain interactions. Current research heavily utilizes deep learning models, including convolutional neural networks (CNNs) and transformers, for tasks such as traversability estimation, semantic mapping, and path planning, often incorporating techniques like reinforcement learning and self-supervised learning to improve efficiency and generalization. These advancements are crucial for improving the safety and reliability of autonomous vehicles in diverse environments, with applications ranging from agricultural robotics to planetary exploration.
Papers
Traverse the Non-Traversable: Estimating Traversability for Wheeled Mobility on Vertically Challenging Terrain
Chenhui Pan, Aniket Datar, Anuj Pokhrel, Matthew Choulas, Mohammad Nazeri, Xuesu Xiao
Verti-Selector: Automatic Curriculum Learning for Wheeled Mobility on Vertically Challenging Terrain
Tong Xu, Chenhui Pan, Xuesu Xiao
Predictive Mapping of Spectral Signatures from RGB Imagery for Off-Road Terrain Analysis
Sarvesh Prajapati, Ananya Trivedi, Bruce Maxwell, Taskin Padir
Off-Road Autonomy Validation Using Scalable Digital Twin Simulations Within High-Performance Computing Clusters
Tanmay Vilas Samak, Chinmay Vilas Samak, Joey Binz, Jonathon Smereka, Mark Brudnak, David Gorsich, Feng Luo, Venkat Krovi