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REMOTE SENSING FOR LAND & RESOURCES    1990, Vol. 2 Issue (3) : 50-54     DOI: 10.6046/gtzyyg.1990.03.08
Technology and Methodology |
GDIIA SYSTEM AND ITS APPLICATION FOR MICROCOMPUTER DIGITAL IMAGE ANALYSIS SOFTWARE OF COMPREHENSIVE GEO-DATA
Zhang Yuanfei, Lu Qiyue, Shao Menglin, Zhi Qihan, Zhu guchang
Research Institute of Geology for Mineral Resources, CNNC.
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Abstract  

GDIIA is a software system for digital image processing, operatin on GW0520C-H microcomputer. It can be used in the integration processing and analysis of remote sensing, geophysical, geochemical and geological surveying data, etc. In this system there are some particular functions for the new development besides the general ones of digital image processing. GDIIA system has been applied in some multi-metals minerogenetic areas and belts (ore-fields). It is provided that the rich multi-sources information and reliable scientific basis for studying minerogenetic geological environment, ore guide of prospecting and delineating prospecting targets, etc.

Keywords Object-oriented;Building      High resolution remote sensing      Object-oriented      Relevant spatial feature     
Issue Date: 02 August 2011
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ZHOU Xiao-Cheng
WANG Xiao-Qin
LUO Jian-Cheng
SHEN Zhan-Feng
WU BO
HU Cong-liang
LIU Ying-zhong
MOU Jun
LI Chao-jin
CHEN Qi-fei
Cite this article:   
ZHOU Xiao-Cheng,WANG Xiao-Qin,LUO Jian-Cheng, et al. GDIIA SYSTEM AND ITS APPLICATION FOR MICROCOMPUTER DIGITAL IMAGE ANALYSIS SOFTWARE OF COMPREHENSIVE GEO-DATA[J]. REMOTE SENSING FOR LAND & RESOURCES, 1990, 2(3): 50-54.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.1990.03.08     OR     https://www.gtzyyg.com/EN/Y1990/V2/I3/50
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