caveline
Demonstrating CavePI: Autonomous Exploration of Underwater Caves by Semantic Guidance
Gupta, Alankrit, Abdullah, Adnan, Li, Xianyao, Ramesh, Vaishnav, Rekleitis, Ioannis, Islam, Md Jahidul
Enabling autonomous robots to safely and efficiently navigate, explore, and map underwater caves is of significant importance to water resource management, hydrogeology, archaeology, and marine robotics. In this work, we demonstrate the system design and algorithmic integration of a visual servoing framework for semantically guided autonomous underwater cave exploration. We present the hardware and edge-AI design considerations to deploy this framework on a novel AUV (Autonomous Underwater Vehicle) named CavePI. The guided navigation is driven by a computationally light yet robust deep visual perception module, delivering a rich semantic understanding of the environment. Subsequently, a robust control mechanism enables CavePI to track the semantic guides and navigate within complex cave structures. We evaluate the system through field experiments in natural underwater caves and spring-water sites and further validate its ROS (Robot Operating System)-based digital twin in a simulation environment. Our results highlight how these integrated design choices facilitate reliable navigation under feature-deprived, GPS-denied, and low-visibility conditions.
- North America > United States > Delaware > New Castle County > Newark (0.14)
- Asia > Singapore (0.04)
- South America > Brazil (0.04)
- (2 more...)
Weakly Supervised Caveline Detection For AUV Navigation Inside Underwater Caves
Yu, Boxiao, Tibbetts, Reagan, Barua, Titon, Morales, Ailani, Rekleitis, Ioannis, Islam, Md Jahidul
Underwater caves are challenging environments that are crucial for water resource management, and for our understanding of hydro-geology and history. Mapping underwater caves is a time-consuming, labor-intensive, and hazardous operation. For autonomous cave mapping by underwater robots, the major challenge lies in vision-based estimation in the complete absence of ambient light, which results in constantly moving shadows due to the motion of the camera-light setup. Thus, detecting and following the caveline as navigation guidance is paramount for robots in autonomous cave mapping missions. In this paper, we present a computationally light caveline detection model based on a novel Vision Transformer (ViT)-based learning pipeline. We address the problem of scarce annotated training data by a weakly supervised formulation where the learning is reinforced through a series of noisy predictions from intermediate sub-optimal models. We validate the utility and effectiveness of such weak supervision for caveline detection and tracking in three different cave locations: USA, Mexico, and Spain. Experimental results demonstrate that our proposed model, CL-ViT, balances the robustness-efficiency trade-off, ensuring good generalization performance while offering 10+ FPS on single-board (Jetson TX2) devices.
- North America > Mexico > Quintana Roo (0.04)
- Europe > Spain > Region of Murcia > Murcia (0.04)
- Asia > Singapore (0.04)
- (10 more...)