Neural-Geometric Tunnel Traversal: Localization-free UAV Flight with Tilted LiDARs
arXiv cs.RO / 4/30/2026
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Key Points
- The paper presents a localization-free UAV navigation approach for GNSS-denied environments such as tunnels and mines, where lighting and wall features can be unreliable or sparse.
- It uses tilted LiDAR data processed with a combination of geometric techniques and deep neural networks to estimate the UAV’s yaw relative to the tunnel axis for navigation direction control.
- A geometric module computes a “safest” in-tunnel position by maximizing distance to the nearest obstacle.
- The authors report that this combined learning-plus-geometry information is sufficient for effective navigation in both straight and curved tunnels as a proof of concept.
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