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典型文献
Unsupervised hyperspectral unmixing based on robust nonnegative dictionary learning
文献摘要:
Considering the sparsity of hyperspectral images (HSIs), dictionary learning frameworks have been widely used in the field of unsupervised spectral unmixing. However, it is worth mentioning here that existing dictionary learning method-based unmixing methods are found to be short of robustness in noisy contexts. To improve the performance, this study specifically puts forward a new unsupervised spectral unmixing solution. For the reason that the solution only functions in a condition that both endmembers and the abundances meet non-negative con-straints, a model is built to solve the unsupervised spectral un-mixing problem on the account of the dictionary learning me-thod. To raise the screening accuracy of final members, a new form of the target function is introduced into dictionary learning practice, which is conducive to the growing robustness of noisy HSI statistics. Then, by introducing the total variation (TV) terms into the proposed spectral unmixing based on robust nonnega-tive dictionary learning (RNDLSU), the context information under HSI space is to be cited as prior knowledge to compute the abundances when performing sparse unmixing operations. Ac-cording to the final results of the experiment, this method makes favorable performance under varying noise conditions, which is especially true under low signal to noise conditions.
文献关键词:
作者姓名:
LI Yang;JIANG Bitao;LI Xiaobin;TIAN Jing;SONG Xiaorui
作者机构:
Department of Space Information,Space Engineering University,Beijing 101400,China;Beijing Institute of Remote Sensing Information,Beijing 100192,China
引用格式:
[1]LI Yang;JIANG Bitao;LI Xiaobin;TIAN Jing;SONG Xiaorui-.Unsupervised hyperspectral unmixing based on robust nonnegative dictionary learning)[J].系统工程与电子技术(英文版),2022(02):294-304
A类:
unmixing,HSIs,nonnega,RNDLSU
B类:
Unsupervised,hyperspectral,nonnegative,dictionary,learning,Considering,sparsity,images,frameworks,have,been,widely,used,field,unsupervised,However,worth,mentioning,here,that,existing,methods,are,found,short,robustness,noisy,contexts,To,improve,performance,this,study,specifically,puts,forward,new,solution,For,reason,only,functions,both,endmembers,abundances,meet,straints,model,built,solve,problem,account,raise,screening,accuracy,final,target,introduced,into,practice,which,conducive,growing,statistics,Then,by,introducing,total,variation,TV,terms,proposed,information,under,space,cited,prior,knowledge,compute,when,performing,sparse,operations,Ac,cording,results,experiment,makes,favorable,varying,noise,conditions,especially,true,low,signal
AB值:
0.487121
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