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REMOTE SENSING FOR LAND & RESOURCES    2009, Vol. 21 Issue (4) : 25-30     DOI: 10.6046/gtzyyg.2009.04.05
Lunar Exploration Column |
IIM DATA PROCESSING FLOW AND ITS GEOLOGICAL APPLICATION
WU Yun-zhao 1,2, TANG Ze-sheng 1
1. Collaborative Research Laboratory on Lunar and Planetary Exploration, Macao University of Science and Technology, Taipa,Macao,China; 2. School of Geographic and Oceanographic Sciences, Nanjing University, Nanjing 210093,China
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Abstract  

This paper evaluated the characteristics and discussed some problems of IIM 2C data. On the basis of an analysis, the solutions for the problems were provided and a data processing flow was established which can provide a method for future researchers. The results show that the response of the left side of IIM data is lower than that of the right in the space domain, and the response of the longer bands has larger errors in the spectral domain. The authors provided a feasible method for modifying these problems. The resulting reflectance derived from absolute calibration and radiometric distortion correction was matched well with earth-based spectra, which suggests that the modified data can be used to study the geology of the moon. With the modified IIM data this paper probed into the types of the rocks in the Aristarchus Plateau area. The results show that the rocks are diverse in this area in both vertical and horizontal directions. The classification accuracy was improved much after the correction for IIM 2C data. Moreover, the possible landslide on the west wall of the Aristarchus crater was recognized. This study indicates that after calibration and correction the IIM data can contribute to the lunar scientific research by exerting its advantages of high spatial and spectral resolution.

Keywords Remote sensing      Small river basin      Water and soil loss     
Issue Date: 16 December 2009
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Cite this article:   
Wu Yun-Zhao, TANG Ze-Sheng. IIM DATA PROCESSING FLOW AND ITS GEOLOGICAL APPLICATION[J]. REMOTE SENSING FOR LAND & RESOURCES,2009, 21(4): 25-30.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2009.04.05     OR     https://www.gtzyyg.com/EN/Y2009/V21/I4/25
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