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REMOTE SENSING FOR LAND & RESOURCES    2014, Vol. 26 Issue (3) : 166-169     DOI: 10.6046/gtzyyg.2014.03.27
Technology Application |
Application of remote sensing images and MapGIS to the inspection of law enforcement based on provincial mining satallite images
LIU Fukui1, LIU Li1, CAO Shixin2, YU Deqin1, MA Lixin1, GUO Jing1
1. Shandong Geological Surveying Institute, Jinan 250013, China;
2. Shandong Monitoring Center of Geological Environment, Jinan 250014, China
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Abstract  At present, most of the remote sensing images are generated directly by remote sensing image processing software or produced by remote sensing image processing software combined with foreign GIS software,such as ArcGIS and MapInfo, but are rarely combined with domestic GIS software,such as MapGIS. Relying on the project of mineral inspection of law enforcement by satellite image, this study focused on solving the problems of automatic mapping and batch input of the mining data by practice. The authors also summarized the effective steps and methods of the application which combine remote sensing images with MapGIS. The results show that raster data of remote sensing images and vector data of MapGIS can be combined together conveniently and effectively, and it can produce the remote sensing images which meet the need of mineral inspection of law enforcement by Shandong satellite image.
Keywords SAR      pixel-level      time series      similarity      dynamic time warping(DTW)      water distribution extraction     
:  TP79  
Issue Date: 01 July 2014
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WANG Yafei
CHENG Liang
LI Manchun
CHEN Wei
CHEN Xiaoyu
CHEN Song
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WANG Yafei,CHENG Liang,LI Manchun, et al. Application of remote sensing images and MapGIS to the inspection of law enforcement based on provincial mining satallite images[J]. REMOTE SENSING FOR LAND & RESOURCES, 2014, 26(3): 166-169.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2014.03.27     OR     https://www.gtzyyg.com/EN/Y2014/V26/I3/166
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