TreeLoc++: Robust 6-DoF LiDAR Localization in Forests with a Compact Digital Forest Inventory
Minwoo Jung, Dongjae Lee, Nived Chebrolu, Haedam Oh, Maurice Fallon, Ayoung Kim

TL;DR
TreeLoc++ introduces a novel forest localization method that uses compact Digital Forest Inventories instead of dense point clouds, achieving high accuracy and robustness for long-term forest monitoring.
Contribution
It presents a new localization framework that operates directly on DFIs, reducing data storage needs and improving reliability over existing dense point cloud methods.
Findings
Achieves centimeter-level localization accuracy in forests.
Demonstrates robustness over a two-year interval with data from 2023 and 2025.
Uses only 250KB of map data for extensive trajectories.
Abstract
Reliable localization is essential for sustainable forest management, as it allows robots or sensor systems to revisit and monitor the status of individual trees over long periods. In modern forestry, this management is structured around Digital Forest Inventories (DFIs), which encode stems using compact geometric attributes rather than raw data. Despite their central role, DFIs have been overlooked in localization research, and most methods still rely on dense gigabyte-sized point clouds that are costly to store and maintain. To improve upon this, we propose TreeLoc++, a global localization framework that operates directly on DFIs as a discriminative representation, eliminating the need to use the raw point clouds. TreeLoc++ reduces false matches in structurally ambiguous forests and improves the reliability of full 6-DoF pose estimation. It augments coarse retrieval with a pairwise…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Robotics and Sensor-Based Localization · Advanced Neural Network Applications
