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Miscellany

Ensemble of support vector machines for land cover classification

Pages 3043-3049 | Received 23 Jul 2007, Accepted 02 Feb 2008, Published online: 29 Apr 2008
 

Abstract

This letter presents the results of two different ensemble approaches to increase the accuracy of land cover classification using support vector machines. Finite ensemble approaches, based on boosting and bagging and infinite ensemble created by embedding the infinite hypothesis in the kernel of support vector machines, are discussed. Results suggest that the infinite ensemble approach provides a significant increase in the classification accuracy in comparison to the radial basis function kernel‐based support vector machines. While using finite ensemble approaches, bagging works well and provides a comparable performance to the infinite ensemble approach, whereas boosting decreases the performance of support vector machines. Comparison in terms of computational cost suggests that finite ensemble approaches require a large processing time in comparison to the infinite ensemble approach.

Acknowledgements

The author thanks three anonymous referees for their critical comments and advice that led to an improvement in the final presentation of this letter.

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