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REMOTE SENSING FOR LAND & RESOURCES    2000, Vol. 12 Issue (1) : 2-10     DOI: 10.6046/gtzyyg.2000.01.01
Review |
30 YEARS FOR SATELLITE OCEAN REMOTE SENSING IN THE WORLD
Wu Peizhong
State Oceanic Administration, Beijing 100081
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Abstract  

This papers review the results of scientific researches in Ocean Remote Sensing based on satellite which obtained in 30 years all over the world, involving Ocean color, Ocean surface topography, Ocean surface winds and waves, Ocean ice and oil spill monitoring. In addition, the characteristis of representative instruments equipped on satellites in the world also are listed.

Keywords Object-oriented      Scale      Segmentation      Optimal scale     
Issue Date: 02 August 2011
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LIN Xian-Cheng
LI Yong-Shu
YANG Tian-Chun
FENG Jian-Xin
WANG Zhan-Jun
Cite this article:   
LIN Xian-Cheng,LI Yong-Shu,YANG Tian-Chun, et al. 30 YEARS FOR SATELLITE OCEAN REMOTE SENSING IN THE WORLD[J]. REMOTE SENSING FOR LAND & RESOURCES, 2000, 12(1): 2-10.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2000.01.01     OR     https://www.gtzyyg.com/EN/Y2000/V12/I1/2

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