×
模态框(Modal)标题
在这里添加一些文本
Close
Close
Submit
Cancel
Confirm
×
模态框(Modal)标题
×
ISSN 1004-0323
CN 62-1099/TP
RSS
|
Email Alert
Toggle navigation
Home
About Journal
Editorial Board
Instruction
Journal Online
Current Issue
Online First
Archive
Most Read
Most Download
Most Cited
Subscription
Advertisement
Publication Ethics
Contact Us
中文
Figure/Table detail
Research on UAV Hyperspectral of Tree Species Classification based on Machine Learning Algorithms and Spatial Resolution Adjustment
Xiangshan ZHOU, Wunian YANG, Ke LUO, Hongyi PIAO, Tao ZHOU, Jie ZHOU, Xiaolu TANG
Remote Sensing Technology and Application
, 2024, 39(
4
): 880-896. DOI:
10.11873/j.issn.1004-0323.2024.4.0880
Fig.5
Classification accuracy trends of random forests and support vector machine algorithms based on different spatial resolutions of images for different tree species in the research area
Other figure/table from this article
Fig. 1
Overview of Chengdu botanical garden and distribution of sample points
Table 1
List of 20 tree types sampl in the study area
Table 2
Original band information of hyperspectral image
Fig. 2
Technical route of UAV hyperspectral tree species classification method based on machine learning algorithm
Table 3
Calculation of hyperspectral image vegetation index
Fig.3
Removal of spectral envelope lines for 20 tree species
Fig.4
First derivative of spectra for 20 tree species
Table 4
Classification results of 20 tree species under original spatial resolution
Table 5
Impact of different spatial resolutions on the classification results of 10 tree species
Table 6
Impact of different spatial resolutions on the classification results of 15 tree species
Table 7
Impact of different spatial resolutions on the classification results of 20 tree species
Table 8
Average classification results of 10, 15, and 20 tree species at different scales