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DOI10.3390/f10020145
Comparison of UAV LiDAR and Digital Aerial Photogrammetry Point Clouds for Estimating Forest Structural Attributes in Subtropical Planted Forests
Cao, Lin; Liu, Hao; Fu, Xiaoyao; Zhang, Zhengnan; Shen, Xin; Ruan, Honghua
发表日期2019
ISSN1999-4907
卷号10期号:2
英文摘要

Estimating forest structural attributes of planted forests plays a key role in managing forest resources, monitoring carbon stocks, and mitigating climate change. High-resolution and low-cost remote-sensing data are increasingly available to measure three-dimensional (3D) canopy structure and model forest structural attributes. In this study, we compared two suites of point cloud metrics and the accuracies of predictive models of forest structural attributes using unmanned aerial vehicle (UAV) light detection and ranging (LiDAR) and digital aerial photogrammetry (DAP) data, in a subtropical coastal planted forest of East China. A comparison between UAV-LiDAR and UAV-DAP metrics was performed across plots among different tree species, heights, and stem densities. The results showed that a higher similarity between the UAV-LiDAR and UAV-DAP metrics appeared in the dawn redwood plots with greater height and lower stem density. The comparison between the UAV-LiDAR and DAP metrics showed that the metrics of the upper percentiles (r for dawn redwood = 0.95-0.96, poplar = 0.94-0.95) showed a stronger correlation than the lower percentiles (r = 0.92-0.93, 0.90-0.92), whereas the metrics of upper canopy return density (r = 0.21-0.24, 0.14-0.15) showed a weaker correlation than those of lower canopy return density (r = 0.32-0.68, 0.31-0.52). The Weibull parameter indicated a higher correlation (r = 0.70-0.72) than that of the Weibull parameter (r = 0.07-0.60) for both dawn redwood and poplar plots. The accuracies of UAV-LiDAR (adjusted (Adj)R-2 = 0.58-0.91, relative root-mean-square error (rRMSE) = 9.03%-24.29%) predicted forest structural attributes were higher than UAV-DAP (Adj-R-2 = 0.52-0.83, rRMSE = 12.20%-25.84%). In addition, by comparing the forest structural attributes between UAV-LiDAR and UAV-DAP predictive models, the greatest difference was found for volume (Adj-R-2 = 0.09, rRMSE = 4.20%), whereas the lowest difference was for basal area (Adj-R-2 = 0.03, rRMSE = 0.86%). This study proved that the UAV-DAP data are useful and comparable to LiDAR for forest inventory and sustainable forest management in planted forests, by providing accurate estimations of forest structural attributes.


WOS研究方向Forestry
来源期刊FORESTS
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/92759
作者单位Nanjing Forestry Univ, Coinnovat Ctr Sustainable Forestry Southern China, Nanjing 210037, Jiangsu, Peoples R China
推荐引用方式
GB/T 7714
Cao, Lin,Liu, Hao,Fu, Xiaoyao,et al. Comparison of UAV LiDAR and Digital Aerial Photogrammetry Point Clouds for Estimating Forest Structural Attributes in Subtropical Planted Forests[J],2019,10(2).
APA Cao, Lin,Liu, Hao,Fu, Xiaoyao,Zhang, Zhengnan,Shen, Xin,&Ruan, Honghua.(2019).Comparison of UAV LiDAR and Digital Aerial Photogrammetry Point Clouds for Estimating Forest Structural Attributes in Subtropical Planted Forests.FORESTS,10(2).
MLA Cao, Lin,et al."Comparison of UAV LiDAR and Digital Aerial Photogrammetry Point Clouds for Estimating Forest Structural Attributes in Subtropical Planted Forests".FORESTS 10.2(2019).
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