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联合多时相GF-6 WFV和Sentinel-2的森林类型识别

叶青龙 欧阳勋志 黄诚 李坚锋 潘萍

江西农业大学学报2024,Vol.46Issue(2):389-400,12.
江西农业大学学报2024,Vol.46Issue(2):389-400,12.DOI:10.3724/aauj.2024035

联合多时相GF-6 WFV和Sentinel-2的森林类型识别

Forest type identification by combining multi-temporal GF-6 WFV and Sentinel-2 data

叶青龙 1欧阳勋志 1黄诚 1李坚锋 1潘萍1

作者信息

  • 1. 江西农业大学 林学院/鄱阳湖流域森林生态系统保护与修复国家林业和草原局重点实验室,江西 南昌 330045
  • 折叠

摘要

Abstract

[Objective]Because of the broken terrain and frequent cloudy and rainy weather,it is difficult to finely identify forest types in southern China.Exploring joint multi-source and multi-temporal remote sensing data is important for identifying forest types.[Method]This study took Xinfeng County of Jiangxi Province as the study area.Based on the Forest Resource Inventory of the Xinfeng County in 2019,eight forest types were identified,including pine forest,Cunninghamia lanceolata forest,broad-leaved forest,coniferous mixed forest,coniferous and broad-leaved mixed forest,bamboo forest,shrub forest and other forestry land.The random forest algorithm was used to compare the forest type identification ability of GF-6 WFV and Sentinel-2 in the same band(purple/dark blue,blue,green,red,near infrared,red edge)and different bands(yellow edge,short-wave infrared),and a combined spectral feature dataset was built.By combining the multi-temporal vegetation index feature dataset which was built by GF-6 WFV and Sentinel-2,the combined spectral feature dataset,texture features,and terrain features,a feature variable selection dataset was constructed using random forest and recursive elimination method for forest type identification.The accuracy of the identification results was verified by using confusion matrix and the actual distribution of forest types.[Result](1)The overall accuracy of the GF-6 WFV for the combination of blue,green and red band was 58.31%.With the addition of the purple,nearinfrared,red edge,yellow edge of GF-6 WFV band and short-wave infrared of Sentinel-2 band,the overall accuracy increased by 1.99%,8.90%,10.71%,1.50%and 14.10%,respectively.The overall accuracy of the blue,green and red band combination of Sentinel-2 was 54.68%.With the addition of the deep blue,nearinfrared,red edge,short-wave infrared of Sentinel-2 band and yellow edge of GF-6 WFV band,the overall accuracy increased by 3.30%,10.82%,12.92%,17.31%and 3.97%,respectively.(2)The overall accuracy and Kappa coefficient of feature variable selection dataset were 80.80%and 75.56%.The order of contribution degree was GF-6 WFV multi-temporal vegetation index,followed by sentinel-2 multi-temporal vegetation index,GF-6 WFV spectral feature,Sentinel-2 spectral feature,topographic feature and texture feature.The contribution rates were 40.44%,23.23%,18.12%,10.21%,4.61%and 3.39%,respectively.(3)The producer's accuracy of pine forest,Cunninghamia lanceolata forest,broad-leaved forest,coniferous mixed forest,coniferous and broad-leaved mixed forest,bamboo forest,shrub forest and other forestry land were 86.97%,85.60%,88.61%,9.43%,19.01%,53.60%,86.90%and 82.56%,respectively,and the user's accuracy was 81.42%,79.79%,77.57%,71.43%,81.82%,67.00%,87.74%and 82.88%,respectively.The identification results are relatively consistent with the actual forest type distribution in the study area.[Conclusion]The combination of multi-temporal GF-6 WFV and Sentinel-2 can integrate the advantages of multi-temporal and multi-source images and effectively improve the identification accuracy of forest types.

关键词

GF-6 WFV/Sentinel-2/森林类型识别/随机森林

Key words

GF-6 WFV/Sentinel-2/forest-type identification/random forest

分类

农业科技

引用本文复制引用

叶青龙,欧阳勋志,黄诚,李坚锋,潘萍..联合多时相GF-6 WFV和Sentinel-2的森林类型识别[J].江西农业大学学报,2024,46(2):389-400,12.

基金项目

国家自然科学基金项目(32360389、32260392) Project supported by National Natural Science Foundation of China(32360389,32260392) (32360389、32260392)

江西农业大学学报

OA北大核心CSTPCD

1000-2286

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