SU Junying, CAO Hui, ZHANG Jianqing. Semi-automatic Extraction Technique of Residential Area in High Resolution Remote Sensing Image[J]. Geomatics and Information Science of Wuhan University, 2004, 29(9): 791-795.
Citation: SU Junying, CAO Hui, ZHANG Jianqing. Semi-automatic Extraction Technique of Residential Area in High Resolution Remote Sensing Image[J]. Geomatics and Information Science of Wuhan University, 2004, 29(9): 791-795.

Semi-automatic Extraction Technique of Residential Area in High Resolution Remote Sensing Image

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  • Received Date: May 11, 2004
  • Published Date: September 04, 2004
  • A residential area texture description based on the 3 ×3 region grey deviations is designed, and the Gauss blur is applied to make the residential area in the texture feature image possessing accordant grey value and limited contrast relative to the background area so as to obtain self-adaptive threshold for image segmentation.And a skeleton processing is proposed to eliminate the road from the residential area.The experiment results show that this technique is very simple and effective to the semi-automatic extraction of the residential areas and can meet the precision requirement of the mapping and surveying with satellite images.
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