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REMOTE SENSING FOR LAND & RESOURCES    1993, Vol. 5 Issue (2) : 6-9     DOI: 10.6046/gtzyyg.1993.02.04
Applied Research |
SATELLITE REMOTE SEASING ON HEAT-ISLAND CHARACTERISTICS IN NANJING CITY
Tang Lingli, Chen Gang, Dai Changda
Remote Sensing Satellita Ground Station Chinese Academy of Sciences
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Abstract  

TMband 6 of Landsat can measure the differences in radiation temperature of ground surface features. Based on this capability, the IHStransformation was applied to put-out heat-islands of Naming City. Some maps which comprehensively reflect the heat distribution of Naming city in summer season hay. been obtained by using the, TMhand 6 and band 3 data. The results Prove that satellite remote sensing, is a good tool for research on heat-island effect and estimation of the environmental quality of city.

Keywords  landsat-7      GIS      Wetland     
Issue Date: 02 August 2011
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ZHAO Yu-Ling
NIE Hong-Feng
YANG Jin-Zhong
WANG Yi
YANG Shao-Ping
LIU Huai-Lin
LIU Xin-Hua
WANG Hui-Feng
KONG Mu
LIU Hua-Zhong
XU Ren-Ting
Cite this article:   
ZHAO Yu-Ling,NIE Hong-Feng,YANG Jin-Zhong, et al. SATELLITE REMOTE SEASING ON HEAT-ISLAND CHARACTERISTICS IN NANJING CITY[J]. REMOTE SENSING FOR LAND & RESOURCES, 1993, 5(2): 6-9.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.1993.02.04     OR     https://www.gtzyyg.com/EN/Y1993/V5/I2/6


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[3] 李旭文.“主成分变换和彩色变换在TM图像信息提取中的应用—以苏州市为例”.环境遥感,1992, 7(4)

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