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Original Articles

A novel self‐organizing neuro‐fuzzy multilayered classifier for land cover classification of a VHR image

, , , &
Pages 4061-4087 | Received 07 Feb 2007, Accepted 04 Jan 2008, Published online: 14 Jun 2008
 

Abstract

A novel self‐organizing neuro‐fuzzy multilayered classifier (SONeFMUC) is introduced in this paper, with feature selection capabilities, for the classification of an IKONOS image. The structure of the proposed network is developed in a sequential fashion using the group method of data handling (GMDH) algorithm. The node models, regarded as generic classifiers, are represented by fuzzy rule‐based systems, combined with a fusion scheme. A data splitting mechanism is incorporated to discriminate between correctly classified and ambiguous pixels. The classifier was tested on the wetland of international importance of Lake Koronia, Greece, and the surrounding agricultural area. To achieve higher classification accuracy, the image was decomposed into two zones: the wetland and the agricultural zones. Apart from the initial bands, additional input features were considered: textural features, intensity–hue–saturation (IHS) and tasseled cap transformation. To assess the quality of the suggested model, the SONeFMUC was compared with a maximum likelihood classifier (MLC). The experimental results show that the SONeFMUC exhibited superior performance to the MLC, providing less confusion of the dominant classes in both zones. In the wetland zone, an overall accuracy of 89.5% was attained.

Acknowledgements

This study was funded by ‘Pythagoras II’, a research grant awarded by the Managing Authority of the Operational Programme ‘Education and Initial Vocational Training’ of Greece, which is partially funded by the European Social Fund, European Commission.

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