Remote Sensing | |
Moving Voxel Method for Estimating Canopy Base Height from Airborne Laser Scanner Data | |
Markus Korhonen1  Katri Tegel1  Janice Burns1  Vesa Leppanen1  Blanca Sanz1  Almasi S. Maguya2  Tuomo Kauranne2  Virpi Junttila2  | |
[1] Arbonaut Ltd., Kaislakatu 2, Joensuu 80130, Finland;Lappeenranta University of Technology, P. O. Box 20, Lappeenranta 53851, Finland; | |
关键词: canopy base height; CBH; forest fire; LiDAR; moving voxel; | |
DOI : 10.3390/rs70708950 | |
来源: DOAJ |
【 摘 要 】
Canopy base height (CBH) is a key parameter used in forest-fire modeling, particularly crown fires. However, estimating CBH is a challenging task, because normally, it is difficult to measure it in the field. This has led to the use of simple estimators (e.g., the average of individual trees in a plot) for modeling CBH. In this paper, we propose a method for estimating CBH from airborne light detection and ranging (LiDAR) data. We also compare the performance of several estimators (Lorey’s mean, the arithmetic mean and the 40th and 50th percentiles) used to estimate CBH at the plot level. The method we propose uses a moving voxel to estimate the height of the gaps (in the LiDAR point cloud) below tree crowns and uses this information for modeling CBH. The advantage of this approach is that it is more tolerant to variations in LiDAR data (e.g., due to season) and tree species, because it works directly with the height information in the data. Our approach gave better results when compared to standard percentile-based LiDAR metrics commonly used in modeling CBH. Using Lorey’s mean, the arithmetic mean and the 40th and 50th percentiles as CBH estimators at the plot level, the highest and lowest values for root mean square error (RMSE) and root mean square error for cross-validation (RMSEcv) and R2 for our method were 1.74/2.40, 2.69/3.90 and 0.46/0.71, respectively, while with traditional LiDAR-based metrics, the results were 1.92/2.48, 3.34/5.51 and 0.44/0.65. Moreover, the use of Lorey’s mean as a CBH estimator at the plot level resulted in models with better predictive value based on the leave-one-out cross-validation (LOOCV) results used to compute the RMSEcv values.
【 授权许可】
Unknown