Scientia Silvae Sinicae ›› 2026, Vol. 62 ›› Issue (3): 74-87.doi: 10.11707/j.1001-7488.LYKX20250054
• Research papers • Previous Articles Next Articles
Sheng Zhou,Fugen Jiang,Shuai Chen,Yi Long,Binbin Wang,Zige Song,Hua Sun*(
)
Received:2025-02-05
Revised:2025-04-19
Online:2026-03-15
Published:2026-03-12
Contact:
Hua Sun
E-mail:sunhua@csuft.edu.cn
CLC Number:
Sheng Zhou,Fugen Jiang,Shuai Chen,Yi Long,Binbin Wang,Zige Song,Hua Sun. Estimation of Forest Aboveground Biomass Using Joint Spaceborne-UAV LiDAR and Sentinel-2 Data[J]. Scientia Silvae Sinicae, 2026, 62(3): 74-87.
Table 1
Variables of UAV and spaceborne LiDAR used in the study"
| 数据类型 Data type | 变量名称 Variable name | 缩写 Abbreviation |
| 无人机激光雷达 UAV LiDAR | 密度特征变量Density metrics | den |
| 高度特征变量Elevation metrics | ele | |
| 强度特征变量Intensity metrics | int | |
| 星载激光雷达 Spaceborne LiDAR | 表观地表反射率Apparent surface reflectance | asr |
| 最小冠层高度Minimum height | h_min | |
| 平均冠层高度Mean height | h_mean | |
| 中位数冠层高度Median height | h_mid | |
| 最大冠层高度Maximum height | h_max | |
| 地形最合适高度Terrain height best fit | h_dem | |
| 冠层高度百分位数Canopy height percentile | h_p (p=25, 50, 60, 70, 75, 80, 85, 90, 95, 98) |
Table 2
Spectral remote sensing variables used in the study"
| 变量名称 Variable name | 计算公式 Calculation formula | 变量名称 Variable name | 计算公式 Calculation formula | |
| 大气阻抗植被指数 Atmospherically resistant vegetation index (ARVI) | 绿色归一化差异植被指数 Green normalized difference vegetation index (GNDVI) | |||
| 差异植被指数 Difference vegetation index (DVI) | 绿色比值植被指数 Green ratio vegetation index (GRVI) | |||
| 增强植被指数 Enhanced vegetation index (EVI) | 归一化植被指数 Normalized difference vegetation index (NDVI) | |||
| 绿色大气阻力指数 Green atmospherically resistant index (GARI) | 红边简单比值 Red edge simple ratio (RESR) | |||
| 绿差植被指数 Green difference vegetation index (GDVI) | 红边叶绿素指数 Red edge chlorophyll index (RECI) | |||
| 红边归一化差值植被指数a Red edge normalized difference vegetation index a (RENDVI_a) | 红边归一化差值植被指数b Red edge normalized difference vegetation index b (RENDVI_b) | |||
| 单波段反射率 Original band reflectance | 灰度差分向量 Gray level difference vector (GLDV) | |||
| 灰度共生矩阵 Gray level co-occurrence matrix (GLCM) | 和差直方图 Sum and difference histogram (SADH) |
Table 4
Accuracy verification results of random forest models with different variable combinations"
| 数据源 Data source | 组合 Combination | 变量 Variables | 决定 系数 R2 | 均方根 误差 RMSE/ ( t?hm?2) | 相对均方 根误差 rRMSE (%) | 估测精度 EA (%) |
| Sentinel-2 | 变量组合1 Combination 1 | b2, EVI, b3, GDVI, b4 | 0.44 | 35.21 | 36.88 | 59.26 |
| 变量组合2 Combination 2 | b2, GLCM_3_ent, b3, GLCM_2_sec, GLCM_3_sec, GLCM_2_ent, GLCM_7_var, GLCM_5_ent, GLCM_1_var, GLCM_7_con | 0.53 | 34.37 | 35.99 | 59.20 | |
| 变量组合3 Combination 3 | b2, GLDV_8_sec, b3, GLDV_5_ent, GLDV_2_var, GLDV_2_ent, GLDV_4_ent, GLDV_2_mea, GLDV_7_var, GLDV_2_con, GLDV_4_sec | 0.51 | 33.74 | 35.33 | 61.46 | |
| 变量组合4 Combination 4 | b2, SADH_8_cor, SADH_1_sec, b3, SADH_6_var, SADH_7_con, SADH_3_sec, SADH_2_sec, SADH_4_cor, SADH_7_var, SADH_7_hom, SADH_4_mea | 0.54 | 33.46 | 35.04 | 60.78 | |
| 变量组合5 Combination 5 | b2, GLDV_8_var, GLCM_4_mea, GLDV_8_ent, GLCM_7_dis, b3, GLCM_2_ent, GLDV_8_sec, GLDV_2_var | 0.56 | 33.02 | 34.58 | 60.71 | |
| Sentinel-2+ ICESat-2 | 变量组合6 Combination 6 | h_85, NDVI, h_max, GLCM_3_ent, h_dem, GLCM_3_cor, GLCM_6_ent, GLDV_1_ent, h_70, h_mean, RENDVI_a, ARVI, GLCM_1_cor | 0.74 | 27.44 | 28.74 | 69.32 |
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