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Improving the estimation of canopy cover from UAV-LiDAR data using a pit-free CHM-based method

Shangshu Cai, Wuming Zhang, Shuangna Jin, Jie Shao, Linyuan Li, Sisi Yu, Guangjian Yan

2021International Journal of Digital Earth28 citationsDOIOpen Access PDF

Abstract

Accurate and rapid estimation of canopy cover (CC) is crucial for many ecological and environmental models and for forest management. Unmanned aerial vehicle-light detecting and ranging (UAV-LiDAR) systems represent a promising tool for CC estimation due to their high mobility, low cost, and high point density. However, the CC values from UAV-LiDAR point clouds may be underestimated due to the presence of large quantities of within-crown gaps. To alleviate the negative effects of within-crown gaps, we proposed a pit-free CHM-based method for estimating CC, in which a cloth simulation method was used to fill the within-crown gaps. To evaluate the effect of CC values and within-crown gap proportions on the proposed method, the performance of the proposed method was tested on 18 samples with different CC values (40−70%) and 6 samples with different within-crown gap proportions (10−60%). The results showed that the CC accuracy of the proposed method was higher than that of the method without filling within-crown gaps (R2 = 0.99 vs 0.98; RMSE = 1.49% vs 2.2%). The proposed method was insensitive to within-crown gap proportions, although the CC accuracy decreased slightly with the increase in within-crown gap proportions.

Topics & Concepts

Crown (dentistry)LidarCanopyPoint cloudEnvironmental scienceRemote sensingCover (algebra)EstimationRangingPoint (geometry)MathematicsGeographyComputer scienceEcologyBiologyGeodesyGeometryEngineeringMaterials scienceSystems engineeringMechanical engineeringComputer visionComposite materialRemote Sensing and LiDAR ApplicationsForest ecology and managementRemote Sensing in Agriculture
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