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Automatic Extraction of Open Space Area from High Resolution Urban Satellite Imagery (PLAGIARIZED ARTICLE)
Hiremath P. S, Kodge B. G
Pages - 164 - 174     |    Revised - 30-4-2010     |    Published - 10-06-2010
Volume - 4   Issue - 2    |    Publication Date - May 2010  Table of Contents
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KEYWORDS
Automatic open space extraction, Image segmentation, Feature extraction
ABSTRACT
In the 21st century, Aerial and satellite images are information rich. They are also complex to analyze. For GIS systems, many features require fast and reliable extraction of open space area from high resolution satellite imagery. In this paper we will study efficient and reliable automatic extraction algorithm to find out the open space area from the high resolution urban satellite imagery. This automatic extraction algorithm uses some filters and segmentations and grouping is applying on satellite images. And the result images may use to calculate the total available open space area and the built up area. It may also use to compare the difference between present and past open space area using historical urban satellite images of that same projection.
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Dr. Hiremath P. S
Gulbarga University - India
Mr. Kodge B. G
S. V. College, Udgir - India
kodgebg@hotmail.com


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