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基于GF-2遥感影像的澳洲坚果林空间分布信息提取

王耀磊 郑毅 张成程 荣渝虹 梁启斌 王艳霞 侯磊 李晓琳

南方农业学报2025,Vol.56Issue(1):74-86,13.
南方农业学报2025,Vol.56Issue(1):74-86,13.DOI:10.3969/j.issn.2095-1191.2025.01.007

基于GF-2遥感影像的澳洲坚果林空间分布信息提取

Spatial distribution information extraction of macadamia forest based on GF-2 remote sensing image

王耀磊 1郑毅 2张成程 3荣渝虹 4梁启斌 5王艳霞 1侯磊 5李晓琳1

作者信息

  • 1. 西南林业大学水土保持学院,云南 昆明 650224
  • 2. 云南开放大学,云南 昆明 650500
  • 3. 国家林业和草原局西南调查规划院,云南 昆明 650021
  • 4. 云南省热带作物科学研究所,云南景洪 666100
  • 5. 西南林业大学生态与环境学院,云南 昆明 650224
  • 折叠

摘要

Abstract

[Objective]This study aimed to quickly and accurately obtain the spatial distribution information of maca-damia forests based on GF-2 remote sensing image.It provided reference for the effective utilization of GF-2 remote sensing image to study the distribution of macadamia forests in the southwestern mountainous areas,as well as for the ex-traction of other land cover types in hilly and mountainous regions.[Method]The study area was located in Nansan Town,Zhenkang County,Lincang City,Yunnan Province.GF-2 image and digital elevation model(DEM)were used as data sources.An object-oriented approach was employed to extract 90 dimensional feature variables,including spectral,texture,shape and terrain features.Eight feature combination schemes(A1 to A8)were designed.The importance of the features was measured using the mean decrease in impurity(MDI)method,and the best feature combination was se-lected.Random forest(RF),support vector machine(SVM),and decision tree(DT)algorithms were used for the ex-traction of macadamia nut forests.The study explored the influence of different feature types and classification algorithms on the accuracy of macadamia nut forest extraction.[Result]Compared to the exhaustive segmentation parameter method,the combination of the scale parameter estimation(ESP)tool and the neighborhood difference absolute value and standard deviation ratio(RMAS)method was more efficient and objective in determining the optimal segmentation scale for spe-cific land cover types.By comparing scheme A8 with scheme A7,it was found that adding terrain as a feature in scheme A8 reduced the overall feature dimensionality,particularly in the texture features,with only 4 texture features retained.The contribution of different feature types to the macadamia nut forest identification was ranked as follows:spectral fea-tures>terrain features>texture features>shape features.In terms of classification algorithms,random forest outper-formed support vector machine and decision tree in overall accuracy(OA),user accuracy(UA),producer accuracy(PA)and Kappa coefficient.Scheme A8,which integrated all features,achieved the best classification results,all higher than those of other schemes.Among the combinations of spectral,texture,shape,and terrain features,the random forest classification method achieved the best accuracy,with an OA of 95.8%,PA of 87.7%,and UA of 94.3% .The spatial distribution of macadamia nut forests showed that the largest plantation area was in the slope range of 15°-20°,covering 2.9 km2.The macadamia nut forest area was mainly distributed in the southeast-facing slopes and at altitudes of 900-1200 m.[Conclusion]The combination scheme of terrain,texture,shape,and terrain after feature selection along with the random forest algorithm can effectively identify the distribution of macadamia nut forests.GF-2 remote sensing data and the object-oriented method have potential applications for mapping and resource monitoring of macadamia forests in the southern mountainous hilly regions and can be used for the identification of other land cover types in the region.

关键词

澳洲坚果/GF-2遥感影像/面向对象/特征优选/随机森林

Key words

macadamia/GF-2 remote sensing image/object-oriented/feature optimization/random forest

分类

农业科技

引用本文复制引用

王耀磊,郑毅,张成程,荣渝虹,梁启斌,王艳霞,侯磊,李晓琳..基于GF-2遥感影像的澳洲坚果林空间分布信息提取[J].南方农业学报,2025,56(1):74-86,13.

基金项目

云南省农业基础研究联合专项(202101BD070001-111) (202101BD070001-111)

云南省重大科技专项—林草科技创新联合专项(202404CB090001) (202404CB090001)

云南省国有自然资源资产权益管理试点项目(632171) (632171)

云南云天化股份有限公司项目(YTH-4320-WB-2021-037666-00) Yunnan Agriculture Fundamental Research Joint Special Project(202101BD070001-111) (YTH-4320-WB-2021-037666-00)

Yun-nan Major Science and Technology Project—Forestry and Grass Science and Technology Innovation Joint Project(202404CB090001) (202404CB090001)

Yunnan State-owned Natural Resources Assets Equity Management Pilot Project(632171) (632171)

Yunnan Yuntianhua Co.,Ltd.Project(YTH-4320-WB-2021-037666-00) (YTH-4320-WB-2021-037666-00)

南方农业学报

OA北大核心

2095-1191

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