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Comparison of computational intelligence based classification techniques for remotely sensed optical image classification

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Auteur
Stathakis, D.; Vasilakos, A.
Date
2006
DOI
10.1109/tgrs.2006.872903
Sujet
fuzzy neural networks (FNNs)
fuzzy sets
genetic algorithms (GAs)
neural networks (NNs)
remote sensing (RS)
FUZZY NEURAL-NETWORKS
PIXEL CLASSIFICATION
PATTERN-RECOGNITION
SUPERVISED CLASSIFICATION
CLUSTERING ALGORITHMS
MULTILAYER PERCEPTRON
GENETIC ALGORITHMS
SENSING DATA
LAND-COVER
SYSTEMS
Geochemistry & Geophysics
Engineering, Electrical & Electronic
Remote
Sensing
Imaging Science & Photographic Technology
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Résumé
Several computational intelligence components, namely neural networks (NNs), fuzzy sets, and genetic algorithms (GAs), have been applied separately or in combination to the process of remotely sensed data classification. By applying computational intelligence, we expect increased accuracy through the use of NNs, optimal NN structure and parameter determination via GAs, and transparency using fuzzy sets is expected. This paper systematically reviews and compares several configurations in the particular context of remote sensing for land cover. In addition, some of the configurations used here, such as NEFCASS and CANFIS, have few previous applications in the field. A comparison of the configurations is achieved by testing the different methods with exactly the same case-study data. A thorough assessment of results is performed by constructing an accuracy matrix for each training and testing data set. The evaluation of different methods is not only based on accuracy but also on compactness, completeness, and consistency. The architecture, produced rule set, and training parameters for the specific classification task are presented. Some comments and directions for future work are given.
URI
http://hdl.handle.net/11615/33381
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