Scientia Silvae Sinicae ›› 2021, Vol. 57 ›› Issue (9): 66-75.doi: 10.11707/j.1001-7488.20210907
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Junpeng Zhao,Lei Zhao,Erxue Chen*,Xiangxing Wan,Kunpeng Xu
Received:
2020-06-10
Online:
2021-09-25
Published:
2021-11-29
Contact:
Erxue Chen
CLC Number:
Junpeng Zhao,Lei Zhao,Erxue Chen,Xiangxing Wan,Kunpeng Xu. Synergy Application of ZY3 Stereo Imaging Pairs and airborne LiDAR Sampling Data for Estimating Mean Height of Forest[J]. Scientia Silvae Sinicae, 2021, 57(9): 66-75.
Table 1
Parameter configuration of the LiDAR sensor"
参数Parameter | 值Value | 参数Parameter | 值Value | |
波长Wavelength/nm | 1 550 | 飞行高度Flying height/m | 1 000 | |
扫描角Scan angle/(°) | ±30 | 脉冲长度Pulse length/ns | 3 | |
垂直精度Vertical accuracy/cm | 15 | 脉冲频率Pulse frequency/kHz | 400 | |
平均点密度Mean point density/m-2 | 8.51 | 光束发散度Beam divergence/(m·rad) | 0.5 |
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