DocumentCode
3849665
Title
Support Vector Selection and Adaptation for Remote Sensing Classification
Author
Gülşen Taskin Kaya;Okan K. Ersoy;Mustafa E. Kamasak
Author_Institution
Department of Computational Science and Engineering, Informatics Institute , Istanbul Technical University, Istanbul, Turkey
Volume
49
Issue
6
fYear
2011
Firstpage
2071
Lastpage
2079
Abstract
Classification of nonlinearly separable data by nonlinear support vector machines (SVMs) is often a difficult task, particularly due to the necessity of choosing a convenient kernel type. Moreover, in order to get the optimum classification performance with the nonlinear SVM, a kernel and its parameters should be determined in advance. In this paper, we propose a new classification method called support vector selection and adaptation (SVSA) which is applicable to both linearly and nonlinearly separable data without choosing any kernel type. The method consists of two steps: selection and adaptation. In the selection step, first, the support vectors are obtained by a linear SVM. Then, these support vectors are classified by using the K-nearest neighbor method, and some of them are rejected if they are misclassified. In the adaptation step, the remaining support vectors are iteratively adapted with respect to the training data to generate the reference vectors. Afterward, classification of the test data is carried out by 1-nearest neighbor with the reference vectors. The SVSA method was applied to some synthetic data, multisource Colorado data, post-earthquake remote sensing data, and hyperspectral data. The experimental results showed that the SVSA is competitive with the traditional SVM with both linearly and nonlinearly separable data.
Keywords
"Support vector machines","Kernel","Training","Accuracy","Training data","Computational complexity","Vectors"
Journal_Title
IEEE Transactions on Geoscience and Remote Sensing
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/TGRS.2010.2096822
Filename
5682043
Link To Document