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REMOTE SENSING FOR LAND & RESOURCES    2011, Vol. 23 Issue (1) : 73-76     DOI: 10.6046/gtzyyg.2011.01.14
Technology and Methodology |
The Modification of the Abnormal Remote Sensing Data from the DVB-S System Based on MODIS
ZHONG Hong-lin 1,2, SHI Run-he 1,2, LIU Chao-shun 1,2, GAO Wei 1,2,3
(1.Key Laboratory of Geographic Information Science, Ministry of Education, East China Normal University, Shanghai 200062, China; 2.Joint Laboratory for Environmental Remote Sensing and Data Assimilation, ECNU & CEODE, CAS, Shanghai 200062, China; 3.Colorado State University, Fort Collins CO 80523, USA)
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Abstract   The DVB-S is a new digital satellite broadcasting technology which meets the industrial standard. Based on this technology,China Meteorological Administration built up a low-cost,wildly-applied satellite remote sensing data sharing platform. The users can acquire the near-real-time satellite remote sensing data from US EOS,NOAA and Chinese FY satellite series. Due to the signal disturbance and other reasons,some received data have lots of abnormal data,which influence their utilization. Considering the multiple receiving stations in the DVB-S system,there would be lots of overlapped areas in their receiving range. A method for modifying the abnormal data in the MODIS 1B swath image by using the correspondent pixels in the overlapped area is introduced in this paper. Its key steps include image selection,overlapped area matching,abnormal data replacement etc., and the automatic data processing code is realized by using Visual C++.
Keywords Remote sensing images      Cloud removal      Homomorphic filter     
: 

TP 751.1

 
Issue Date: 22 March 2011
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FENG Chun
MA Jian-wen
DAI Qin
CHEN Xue
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FENG Chun,MA Jian-wen,DAI Qin, et al. The Modification of the Abnormal Remote Sensing Data from the DVB-S System Based on MODIS[J]. REMOTE SENSING FOR LAND & RESOURCES, 2011, 23(1): 73-76.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2011.01.14     OR     https://www.gtzyyg.com/EN/Y2011/V23/I1/73
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