ARS  Vol.6 No.3 , September 2017
Applications of Hyperspectral Remote Sensing in Ground Object Identification and Classification
Hyperspectral remote sensing has become one of the research frontiers in ground object identification and classification. On the basis of reviewing the application of hyperspectral remote sensing in identification and classification of ground objects at home and abroad. The research results of identification and classification of forest tree species, grassland and urban land features were summarized. Then the researches of classification methods were summarized. Finally the prospects of hyperspectral remote sensing in ground object identification and classification were prospected.
Cite this paper
Wei, Y. , Zhu, X. , Li, C. , Guo, X. , Yu, X. , Chang, C. and Sun, H. (2017) Applications of Hyperspectral Remote Sensing in Ground Object Identification and Classification. Advances in Remote Sensing, 6, 201-211. doi: 10.4236/ars.2017.63015.
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