Title
Neural Networks Classifiers Based on Geocoded Data and MultiSpectral Images for Satellite Image Interpretation
Abstract
In previous papers, we presented an image interpretation system for automatic cartography using remote sensing and photointerpreter knowledge for classification purpose. Two different approaches were proposed: expert system (ICARE) [1] and connexionist approach [5]. Both used a preclassification made with the maximum likelihood method and included texture features derived from grey levels cooccurrences matrices. Then expert knowledge was added to improve classification results. Even if this approach has shown good results, one of the problem we had was expert knowledge acquisition and their expression in a symbolic way (production rules with certainty factors). Up to now, this stage was made in a natural language form using a textual interface. Getting pertinent rules took a long time because of the many trial- and-error needed by such a process. We want to overcome textual acquisition limitations by providing a way of reducing knowledge acquisition time thanks to neural networks generalization capabilities.
Year
DOI
Venue
1993
10.1007/3-540-57233-3_115
CAIP
Keywords
Field
DocType
multispectral images,geocoded data,neural networks,satellite image,neural network,remote sensing,maximum likelihood method,natural language,expert system
Certainty,Computer science,Artificial intelligence,Artificial neural network,Computer vision,Pattern recognition,Geocoding,Expert system,Multispectral image,Natural language,Machine learning,Satellite image,Knowledge acquisition
Conference
ISBN
Citations 
PageRank 
3-540-57233-3
2
0.73
References 
Authors
1
3
Name
Order
Citations
PageRank
L. Mascarilla1141.25
E. H. Zahzah231.46
Jacky Desachy3349.25