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Weakly Supervised Caveline Detection for AUV Navigation Inside Underwater Caves

Authors: Boxiao Yu, Reagan Tibbetts, Titon Barua, Ailani Morales, Ioannis Rekleitis, Md Jahidul Islam

Abstract: 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 robustnessefficiency trade-off, ensuring good generalization performance while offering 10+ FPS on single-board (Jetson TX2) devices.

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@inproceedings{YuIROS2023, author = {Boxiao Yu and Reagan Tibbetts and Titon Barua and Ailani Morales and Ioannis Rekleitis and Md Jahidul Islam}, booktitle = {IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)}, title = {Weakly Supervised Caveline Detection for AUV Navigation Inside Underwater Caves}, year = {2023}, volume = {}, number = {}, pages = {9933-9940}, keywords = {}, doi = {10.1109/IROS55552.2023.10342435} }