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REMOTE SENSING FOR LAND & RESOURCES    2009, Vol. 21 Issue (1) : 18-22     DOI: 10.6046/gtzyyg.2009.01.05
Assessment of Data Simulation and Application Potential |
THE SIMULATOR FRAMEWORK OF DYNAMIC IMAGING OF THE 02B HR OPTICAL REMOTE SENSOR BASED ON LAND AND RESOURCES MANAGEMENT APPLICATION ASSESSMENT
QIU Zhen-ge1,2, GAN Fu-ping3, YOU Shu-cheng4 ,YUE Qing-xing1,5, ZHANG Chun-ling6, JIA Yong-hong5
1. Chinese Academy of Surveying and Mapping, Beijing 100039, China; 2. Institute of Computing Technology, Chinese Academy of Sciences, Beijing 100080, China; 3. China Aero Geophysical Survey & Remote Sensing Center for Land and Resources, Beijing 100083, China; 4. China Land Surveying and Planning Institute, Beijing 100035, China; 5. College of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430079, China; 6. Henan Bureau of Surveying and Mapping, Zhengzhou 450003, China
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Abstract  

From the change of a satellite images consumer to a holder of satellites, we are facing the challenge of evaluating the satellite and its payload technical criteria rather than images from satellite image vendors. With over tens of years of special application, the application experts have gained lots of experience to evaluate images instead of the criteria of a satellite. It is therefore necessary to bridge the gap between the satellite producing experts and the application experts, with the simulation of satellite imaging. The goal of the simulation is to connect the satellite and its payload technical criteria with the radiometric and geometric qualities of its images, and this technology will play a key role in the application assessment and the development of the application system in the phase of manufacturing the satellite. As the physical process of the imaging of an on-orbit satellite is very complicated, and perfect simulation of its imaging is a great challenge in both technology and engineering, the authors’ simulation technical framework focuses on the simulation of degeneration of the radiometric and geometric qualities of the images which constitute the fundamental criteria in land and resources management application. In this paper the authors have given a detailed description of the framework for digital simulation of the high resolution optical sensor and verified it with China-made 02B satellite equipped with a high resolution optical sensor of 2.4m ground sample resolution. A potentially improved simulation framework is also put forward.

Keywords Remote sensing      Geological disaster      Mineral resources      Tourism resources      Comprehensive investigation      Predicting and evaluating     
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TP75

 
Issue Date: 20 May 2009
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QIU Zhen-Ge, GAN Fu-Ping, YOU Shu-Cheng, YUE Qing-Xing, ZHANG Chun-Ling, JIA Yong-Hong. THE SIMULATOR FRAMEWORK OF DYNAMIC IMAGING OF THE 02B HR OPTICAL REMOTE SENSOR BASED ON LAND AND RESOURCES MANAGEMENT APPLICATION ASSESSMENT[J]. REMOTE SENSING FOR LAND & RESOURCES,2009, 21(1): 18-22.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2009.01.05     OR     https://www.gtzyyg.com/EN/Y2009/V21/I1/18
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