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Journal Article Sector-Based Perimeter Reconstruction for Tree Diameter Estimation Using 3D LiDAR Point Clouds
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Authors
Wonjune Kim, Hyun-Sik Son, Su-Yong An
Issue Date
2025-08
Citation
Remote Sensing, v.17, no.16, pp.1-25
ISSN
2072-4292
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.3390/rs17162880
Abstract
Accurate estimation of tree diameter at breast height (DBH) from LiDAR point clouds is essential for forest inventory, biomass assessment, and ecological monitoring. This paper presents a perimeter-based DBH estimation framework that achieves competitive accuracy against geometric fitting methods across three datasets. The proposed approach partitions the trunk cross-section into angular sectors and employs Gaussian Mixture Models (GMMs) to identify representative boundary points in each sector, weighted by radial proximity and statistical confidence. To handle occlusion and partial scans, missing sectors are reconstructed using symmetry-aware proxy generation. The final perimeter is modeled via either convex hull or B-spline interpolation, from which DBH is derived. Extensive experiments were conducted on two public TreeScope datasets and a custom mobile LiDAR dataset. Compared to the Density-Based Clustering Ring Extraction (DBCRE) baseline, our method reduced RMSE by 22.7% on UCM-0523M (from 2.60 to 2.01 cm), 34.3% on VAT-0723M (from 3.50 to 2.30 cm), and 29.6% on the Custom Dataset (from 2.16 to 1.52 cm). Ablation studies confirmed the individual and synergistic contributions of GMM clustering, radial consistency filtering, and proxy synthesis. Overall, the method provides a flexible alternative that reduces dependence on strict geometric assumptions, offering improved DBH estimation performance with moderate occlusion and incomplete, uneven boundary coverage.
KSP Keywords
3D Lidar, B-spline interpolation, Boundary points, Convex Hull, Cross section, Density-based clustering, Diameter at breast height, Ecological monitoring, Fitting method, Forest inventory, GMM clustering
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CC BY