ORIGINAL PAPER
Vegetation in recognition of changes in earth remote sensing images
 
 
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Journal of Research and Applications in Agricultural Engineering 2011;56(3):7-14
 
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ABSTRACT
The method has been developed for recognition of changes, caused by vegetation, using the Earth remote sensing data obtained at different points of time. The method includes automatic calculation of brightness groups in segments of changes for each range in the multizonal image. Also, the problem of the spatial multispectral decomposition is resolved with regard to the areas of changes caused by vegetation, with the automatic selection of the object's components homogeneous in terms of their reflection properties.
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ISSN:1642-686X
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