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Fuzzy rules extraction and redundancy elimination: An application to remote sensing image analysis

✍ Scribed by Laurent Mascarilla


Publisher
John Wiley and Sons
Year
1997
Tongue
English
Weight
381 KB
Volume
12
Category
Article
ISSN
0884-8173

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✦ Synopsis


Regarding remote sensing images analysis viewed as a pattern recognition problem, one has to take into account numeric and symbolic knowledge about searched classes and objects. Firstly we briefly describe an expert system approach for image classification according to expert knowledge about best sites for vegetation classes in terms of Ž . out-image data D.E.M., † soils, hydrological network, roads, villages . . . . In this framework of an image interpretation system for automatic cartography based on remote sensing image classification improved by a photo interpreter knowledge, we developed a machine learning system based on neural networks which simultaneously produce fuzzy rules, with their linguistic approximation, and a final classification. This article investigates the application of mutual information criterion to simplify fuzzy rules namely to select an informative subset of premises out of an initial set. A vegetation classification Ž experiment made according to generated rules before and after the simplification . process with a satellite image will be presented. We conclude by summing up the various aspects of fuzzy theory used in our application.