Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications

The application of LiDAR technology in extracting individual trees and stand parameters plays a crucial role in forest surveys. Accurate identification of individual tree trunks is a critical foundation for subsequent parameter extraction. For LiDAR-acquired forest point cloud data, existing two-dim...

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Main Authors: Shaobo Ma, Yongkang Chen, Zhefan Li, Junlin Chen, Xiaolan Zhong
Format: Article
Language:English
Published: MDPI AG 2025-01-01
Series:Sensors
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Online Access:https://www.mdpi.com/1424-8220/25/3/714
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author Shaobo Ma
Yongkang Chen
Zhefan Li
Junlin Chen
Xiaolan Zhong
author_facet Shaobo Ma
Yongkang Chen
Zhefan Li
Junlin Chen
Xiaolan Zhong
author_sort Shaobo Ma
collection DOAJ
description The application of LiDAR technology in extracting individual trees and stand parameters plays a crucial role in forest surveys. Accurate identification of individual tree trunks is a critical foundation for subsequent parameter extraction. For LiDAR-acquired forest point cloud data, existing two-dimensional (2D) plane-based algorithms for tree trunk detection often suffer from spatial information loss, resulting in reduced accuracy, particularly for tilted trees. While cylinder fitting algorithms provide a three-dimensional (3D) solution for trunk detection, their performance in complex forest environments remains limited due to sensitivity to parameters like distance thresholds. To address these challenges, this study proposes an improved individual tree trunk detection algorithm, Random Sample Consensus Cylinder Fitting (RANSAC-CyF), specifically optimized for detecting cylindrical tree trunks. Validated in three forest plots with varying complexities in Tianhe District, Guangzhou, the algorithm demonstrated significant advantages in the inlier rate, detection success rate, and robustness for tilted trees. The study showed the following results: (1) The average difference between the inlier rates of tree trunks and non-tree points for the three sample plots using RANSAC-CyF were 0.59, 0.63, and 0.52, respectively, which were significantly higher than those using the Least Squares Circle Fitting (LSCF) algorithm and the Random Sample Consensus Circle Fitting (RANSAC-CF) algorithm (<i>p</i> < 0.05). (2) RANSAC-CyF required only 2 and 8 clusters to achieve a 100% detection success rate in Plot 1 and Plot 2, while the other algorithms needed 26 and 40 clusters. (3) The effective distance threshold range of RANSAC-CyF was more than twice that of the comparison algorithms, maintaining stable inlier rates above 0.9 across all tilt angles. (4) The RANSAC-CyF algorithm still achieved good detection performance in the challenging Plot 3. Together, the other two algorithms failed to detect. The findings highlight the RANSAC-CyF algorithm’s superior accuracy, robustness, and adaptability in complex forest environments, significantly improving the efficiency and precision of individual tree trunk detection for forestry surveys and ecological research.
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spelling doaj-art-c99efa16905041cca87afb33cf16bdbb2025-08-20T02:12:29ZengMDPI AGSensors1424-82202025-01-0125371410.3390/s25030714Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry ApplicationsShaobo Ma0Yongkang Chen1Zhefan Li2Junlin Chen3Xiaolan Zhong4College of Resources and Environment, South China Agricultural University, Guangzhou 510642, ChinaCollege of Resources and Environment, South China Agricultural University, Guangzhou 510642, ChinaCollege of Resources and Environment, South China Agricultural University, Guangzhou 510642, ChinaCollege of Resources and Environment, South China Agricultural University, Guangzhou 510642, ChinaCollege of Resources and Environment, South China Agricultural University, Guangzhou 510642, ChinaThe application of LiDAR technology in extracting individual trees and stand parameters plays a crucial role in forest surveys. Accurate identification of individual tree trunks is a critical foundation for subsequent parameter extraction. For LiDAR-acquired forest point cloud data, existing two-dimensional (2D) plane-based algorithms for tree trunk detection often suffer from spatial information loss, resulting in reduced accuracy, particularly for tilted trees. While cylinder fitting algorithms provide a three-dimensional (3D) solution for trunk detection, their performance in complex forest environments remains limited due to sensitivity to parameters like distance thresholds. To address these challenges, this study proposes an improved individual tree trunk detection algorithm, Random Sample Consensus Cylinder Fitting (RANSAC-CyF), specifically optimized for detecting cylindrical tree trunks. Validated in three forest plots with varying complexities in Tianhe District, Guangzhou, the algorithm demonstrated significant advantages in the inlier rate, detection success rate, and robustness for tilted trees. The study showed the following results: (1) The average difference between the inlier rates of tree trunks and non-tree points for the three sample plots using RANSAC-CyF were 0.59, 0.63, and 0.52, respectively, which were significantly higher than those using the Least Squares Circle Fitting (LSCF) algorithm and the Random Sample Consensus Circle Fitting (RANSAC-CF) algorithm (<i>p</i> < 0.05). (2) RANSAC-CyF required only 2 and 8 clusters to achieve a 100% detection success rate in Plot 1 and Plot 2, while the other algorithms needed 26 and 40 clusters. (3) The effective distance threshold range of RANSAC-CyF was more than twice that of the comparison algorithms, maintaining stable inlier rates above 0.9 across all tilt angles. (4) The RANSAC-CyF algorithm still achieved good detection performance in the challenging Plot 3. Together, the other two algorithms failed to detect. The findings highlight the RANSAC-CyF algorithm’s superior accuracy, robustness, and adaptability in complex forest environments, significantly improving the efficiency and precision of individual tree trunk detection for forestry surveys and ecological research.https://www.mdpi.com/1424-8220/25/3/714individual tree trunk detectionterrestrial LiDARrandom sample consensus cylinder fittingpoint cloud
spellingShingle Shaobo Ma
Yongkang Chen
Zhefan Li
Junlin Chen
Xiaolan Zhong
Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
Sensors
individual tree trunk detection
terrestrial LiDAR
random sample consensus cylinder fitting
point cloud
title Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
title_full Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
title_fullStr Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
title_full_unstemmed Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
title_short Improved Cylinder-Based Tree Trunk Detection in LiDAR Point Clouds for Forestry Applications
title_sort improved cylinder based tree trunk detection in lidar point clouds for forestry applications
topic individual tree trunk detection
terrestrial LiDAR
random sample consensus cylinder fitting
point cloud
url https://www.mdpi.com/1424-8220/25/3/714
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AT yongkangchen improvedcylinderbasedtreetrunkdetectioninlidarpointcloudsforforestryapplications
AT zhefanli improvedcylinderbasedtreetrunkdetectioninlidarpointcloudsforforestryapplications
AT junlinchen improvedcylinderbasedtreetrunkdetectioninlidarpointcloudsforforestryapplications
AT xiaolanzhong improvedcylinderbasedtreetrunkdetectioninlidarpointcloudsforforestryapplications