首页 | 本学科首页   官方微博 | 高级检索  
     

基于线性光谱模型的混合像元分解方法与比较
引用本文:陈峰,邱全毅,熊永柱,黄少鹏.基于线性光谱模型的混合像元分解方法与比较[J].遥感信息,2010,0(4):22-28.
作者姓名:陈峰  邱全毅  熊永柱  黄少鹏
作者单位:1. 中国科学院城市环境研究所,城市环境与健康重点实验室,厦门,361021
2. 中国科学院城市环境研究所,城市环境与健康重点实验室,厦门,361021;嘉应学院地理系,梅州,514015
3. 密歇根州大学地质科学学院,安娜堡,密歇根州48109-1005,美国
基金项目:中国科学院知识创新工程重要方向项目,中国科学院知识创新工程领域前沿项目,中国科学院知识创新工程领域前沿项目 
摘    要:线性光谱模型是目前解决城市中等空间分辨率遥感(如Landsat)中存在的混合像元问题的简单、有效的策略。本实验以广州区域为研究区,利用ENVI/IDL影像处理和开发平台对4种混合像元线性光谱分解方法进行了对比,即无约束条件法、带部分约束条件法、普通带全约束条件法和带全约束条件的可变端元法。结果表明,普通带全约束条件法和带全约束条件的可变端元法的分解结果比无约束条件法和带部分约束条件法的分解结果合理,均方根误差明显要小;同时,带全约束条件的可变端元法要优于普通带全约束条件法。光谱归一化处理则对不同分解方法带来不同的影响,应依据实际需要采取合适的光谱处理方式。

关 键 词:Landsat  混合像元  线性光谱模型
收稿时间:2009-10-12
修稿时间:2009-11-11

Pixel Unmixing Based on Linear Spectral Mixture Model:Methods and Comparison
CHEN Feng,QIU Quan-yi,XIONG Yong-zhu,HUANG Shao-peng.Pixel Unmixing Based on Linear Spectral Mixture Model:Methods and Comparison[J].Remote Sensing Information,2010,0(4):22-28.
Authors:CHEN Feng  QIU Quan-yi  XIONG Yong-zhu  HUANG Shao-peng
Affiliation:1 Key Lab of Urban Environment and Health,Institute of Urban Environment,Chinese Academy of Sciences,Xiamen 361021;2 Department of Geography,Jiaying University,Meizhou 514015;3 Department of Geological Sciences,University of Michigan,Ann Arbor,MI 48109-1005,USA)
Abstract:At present,Linear Spectral Mixture Model(LSMM) has been considered as a simple but effective way to extract useful information from the mixed pixel which is the problem confronted in the application of spatial medium-resolution remote sensing images(e.g.Landsat) to study the urban environment.Taking Guangzhou as a study region,four unmixture approaches based on the concept of LSMM were developed and compared using ENVI/IDL,which is a popular platform for image processing and code development.Unmixture approaches in this study are termed unconstrained,partial-constrained,generally fully constrained(GFC),and selective endmember with fully constrained(SEFC) respectively.The results indicate that GFC and SEFC have the advantage over the unconstrained and partial-constrained approaches in the reasonability of unmixing result and with smaller root mean square error(RMSE),however,SEFC is a better alternative to GFC.It is also shown spectra normalization might bring different effects to each method mentioned in this study.So,in conclusion,the appropriate spectral processing should be taken according to the actual needs.
Keywords:Landsat
本文献已被 CNKI 维普 万方数据 等数据库收录!
点击此处可从《遥感信息》浏览原始摘要信息
点击此处可从《遥感信息》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号