Neural-Geometric Tunnel Traversal: Localization-free UAV Flight with Tilted LiDARs

arXiv cs.RO / 4/30/2026

💬 OpinionDeveloper Stack & InfrastructureIdeas & Deep AnalysisModels & Research

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.

Abstract

Navigation of UAVs in challenging environments like tunnels or mines, where it is not possible to use GNSS methods to self-localize, illumination may be uneven or nonexistent, and wall features are likely to be scarce, is a complex task, especially if the navigation has to be done at high speed. In this paper we propose a novel proof-of-concept navigation technique for UAVs based on the use of LiDAR information through the joint use of geometric and machine-learning algorithms. The perceived information is processed by a deep neural network to establish the yaw of the UAV with respect to the tunnel's longitudinal axis, in order to adjust the direction of navigation. Additionally, a geometric method is used to compute the safest location inside the tunnel (i.e. the one that maximizes the distance to the closest obstacle). This information proves to be sufficient for simple yet effective navigation in straight and curved tunnels.