Based on IDRISI Remote Sensing Images Land-Use Types of Supervised Classification Techniques

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With remote sensing technology and computer technology, remote sensing classification technology has been rapid progress. In the traditional classification of remote sensing technology, based on the combination of today's technology in the field of remote sensing image classification, some new developments and applications for land cover classification techniques to make more comprehensive elaboration. Using the minimum distance classifier extracts of the study area land use types. Ultimately extracted land use study area distribution image and make its analysis and evaluation.

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305-308

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September 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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