Abstract

The quantitative structure model (QSM) contains the branch geometry and attributes of the tree. AdQSM is a new, accurate, and detailed tree QSM. In this paper, an automatic modeling method based on AdQSM is developed, and a low-cost technical scheme of tree structure modeling is provided, so that AdQSM can be freely used by more people. First, we used two digital cameras to collect two-dimensional (2D) photos of trees and generated three-dimensional (3D) point clouds of plot and segmented individual tree from the plot point clouds. Then a new QSM-AdQSM was used to construct tree model from point clouds of 44 trees. Finally, to verify the effectiveness of our method, the diameter at breast height (DBH), tree height, and trunk volume were derived from the reconstructed tree model. These parameters extracted from AdQSM were compared with the reference values from forest inventory. For the DBH, the relative bias (rBias), root mean square error (RMSE), and coefficient of variation of root mean square error (rRMSE) were 4.26%, 1.93 cm, and 6.60%. For the tree height, the rBias, RMSE, and rRMSE were—10.86%, 1.67 m, and 12.34%. The determination coefficient (R2) of DBH and tree height estimated by AdQSM and the reference value were 0.94 and 0.86. We used the trunk volume calculated by the allometric equation as a reference value to test the accuracy of AdQSM. The trunk volume was estimated based on AdQSM, and its bias was 0.07066 m3, rBias was 18.73%, RMSE was 0.12369 m3, rRMSE was 32.78%. To better evaluate the accuracy of QSM’s reconstruction of the trunk volume, we compared AdQSM and TreeQSM in the same dataset. The bias of the trunk volume estimated based on TreeQSM was −0.05071 m3, and the rBias was −13.44%, RMSE was 0.13267 m3, rRMSE was 35.16%. At 95% confidence interval level, the concordance correlation coefficient (CCC = 0.77) of the agreement between the estimated tree trunk volume of AdQSM and the reference value was greater than that of TreeQSM (CCC = 0.60). The significance of this research is as follows: (1) The automatic modeling method based on AdQSM is developed, which expands the application scope of AdQSM; (2) provide low-cost photogrammetric point cloud as the input data of AdQSM; (3) explore the potential of AdQSM to reconstruct forest terrestrial photogrammetric point clouds.

Highlights

  • The tree model reconstructed by 3D point clouds can be used for quantitative analysis of tree size, tree structure, and other attributes, so as to improve the estimate accuracy of forest stock, above-ground biomass (AGB), and carbon storage [1]

  • The most difference from the allometric equation is that tree height and diameter at breast height (DBH) are not required as quantitative structure model (QSM) method can directly estimate trunk volumes from reconstructed tree model

  • Using trunk volume derived from allometric equation based on destructive sampling as reference value, we evaluated the accuracy of AdQSM and TreeQSM to calculate trunk volume respectively

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Summary

Introduction

The tree model reconstructed by 3D point clouds can be used for quantitative analysis of tree size, tree structure, and other attributes, so as to improve the estimate accuracy of forest stock, above-ground biomass (AGB), and carbon storage [1]. Provides a large number of accurate information on forest structure parameters, such as DBH, tree height, and sub-branch height [17,18] This technology fills the gap between treescale manual measurements and large airborne LiDAR measurements [19,20]. Some QSM algorithms based on TLS point clouds have been developed and can accurately extract tree attributes. LiDAR point clouds and destructive tree measurement data were used to test the accuracy of AdQSM’s estimation of tree attributes such as DBH, tree height, branch length, branch number, volume, and AGB [41,42,43]. Clouds and destructive tree measurement data were used to test the accuracy of AdQSM’s estimation of tree attributes such as DBH, tree height, branch length, branch number, volume, and AGB [41,42,43].

Forest
Collection and Processing of TP Point Clouds
Enable
Automatic
Initial
Comparision of Trunk
TreeQSM
Accuracy
Accuracy Evaluation
Results
11. Comparison of DBH
The Table
Trunk Volume
Limitations and Application Potential
Conclusions
Full Text
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