DocumentCode
1141111
Title
A Multiobjective Genetic SVM Approach for Classification Problems With Limited Training Samples
Author
Ghoggali, Noureddine ; Melgani, Farid ; Bazi, Yakoub
Author_Institution
Dept. of Inf. Eng. & Comput. Sci., Univ. of Trento, Trento
Volume
47
Issue
6
fYear
2009
fDate
6/1/2009 12:00:00 AM
Firstpage
1707
Lastpage
1718
Abstract
In this paper, a novel method for semisupervised classification with limited training samples is presented. Its aim is to exploit unlabeled data available at zero cost in the image under analysis for improving the accuracy of a classification process based on support vector machines (SVMs). It is based on the idea to augment the original set of training samples with a set of unlabeled samples after estimating their label. The label estimation process is performed within a multiobjective genetic optimization framework where each chromosome of the evolving population encodes the label estimates as well as the SVM classifier parameters for tackling the model selection issue. Such a process is guided by the joint minimization of two different criteria which express the generalization capability of the SVM classifier. The two explored criteria are an empirical risk measure and an indicator of the classification model sparseness, respectively. The experimental results obtained on two multisource remote sensing data sets confirm the promising capabilities of the proposed approach, which allows the following: (1) taking a clear advantage in terms of classification accuracy from unlabeled samples used for inflating the original training set and (2) solving automatically the tricky model selection issue.
Keywords
genetic algorithms; geophysics computing; learning (artificial intelligence); pattern classification; remote sensing; support vector machines; SVM classifier parameters; classification model sparseness indicator; classification problems; classification process accuracy; empirical risk measure; joint minimization; label estimation process; limited training samples; model selection; multiobjective genetic SVM approach; multiobjective genetic optimization framework; semisupervised classification; support vector machines; unlabeled data; Data inflation; genetic algorithms (GAs); multiobjective optimization (MO); semisupervised classification; support vector machine (SVM);
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/TGRS.2008.2007128
Filename
4773257
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