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Original Articles

Adaptive clustering of airborne LiDAR data to segment individual tree crowns in managed pine forests

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Pages 117-139 | Received 31 Dec 2007, Accepted 04 Feb 2009, Published online: 13 Jan 2010
 

Measuring individual trees can provide valuable information about forests, and airborne light detection and ranging (LiDAR) sensors have been used recently to identify individual trees and measure structural tree parameters. Past results, however, have been mixed because of reliance on interpolated (image) versions of the LiDAR measurements and search methods that do not adapt to variations in canopies. In this work, an adaptive clustering method is developed using airborne LiDAR data acquired over two distinctly different managed pine forests in North-Central Florida, USA. A crucial issue in isolating individual trees is determining the appropriate size of the moving window (search radius) when locating seed points. The proposed approach works directly on the three-dimensional (3D) ‘cloud’ of LiDAR points and adapts to irregular canopies sizes. The region growing step yields collectively exhaustive sets in an initial segmentation of tree canopies. An agglomerative clustering step is then used to merge clusters that represent parts of whole canopies using locally varying height distribution. The overall tree detection accuracy achieved is 95.1% with no significant bias. The tree detection enables subsequent estimation of tree height and vertical crown length to an accuracy better than 0.8 and 1.5 m, respectively.

Acknowledgements

This work was partially supported by the National Science Foundation (NSF) through the National Centre for Airborne Laser Mapping (NCALM) under grant EAR-0518962 and the US Army Research Office (ARO) under grant W911NF-06-1-0459. We are grateful for the assistance of the Forest Biology Research Cooperative (FBRC) in providing the in situ data. Special thanks to Rayonier Inc. and to Drs Eric Jokela and Timothy Martin who provided access to the experimental study sites.

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