Neural and statistical techniques for remote sensing image classification

This paper examines different approaches to remote sensing images classification. Included in the study are statistical approach, in particular Gaussian maximum likelihood classifier, and two different neural networks paradigms: multilayer perceptron trained with EDBD algorithm, and ARTMAP neural ne...

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Bibliographic Details
Date:2010
Main Authors: Grypych, Iu., Kussul, N., Kussul, O.
Format: Article
Language:English
Published: Інститут програмних систем НАН України 2010
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Online Access:https://nasplib.isofts.kiev.ua/handle/123456789/14712
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Journal Title:Digital Library of Periodicals of National Academy of Sciences of Ukraine
Cite this:Neural and statistical techniques for remote sensing image classification/ Iu. Grypych, N. Kussul, O. Kussul// Пробл. програмув. — 2010. — № 2-3. — С. 577-583. — Бібліогр.: 23 назв. — англ.

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Digital Library of Periodicals of National Academy of Sciences of Ukraine
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Summary:This paper examines different approaches to remote sensing images classification. Included in the study are statistical approach, in particular Gaussian maximum likelihood classifier, and two different neural networks paradigms: multilayer perceptron trained with EDBD algorithm, and ARTMAP neural network. These classification methods are compared on data acquired from Landsat-7 satellite. Experimental results showed that to achieve better performance of classifiers modular neural networks and committee machines should be applied.