DocumentCode :
513265
Title :
K-way tree classification based on semi-greedy structure applied to multisource remote sensing images
Author :
Chang, Yang-Lang ; Chen, Zhi-Ming ; Fang, Jyh-Perng ; Hsu, Wei-Lieh ; Liang, Wen-Yew ; Hsieh, Tung-Ju ; Ren, Hsuan ; Chen, Kun-Shan
Author_Institution :
Dept. of Electr. Eng., Nat. Taipei Univ. of Technol., Taipei, Taiwan
Volume :
3
fYear :
2009
fDate :
12-17 July 2009
Abstract :
In this paper we present a new supervised classification method, referred to as the k-way tree semi-greedy (KTSG) classifier, for the classification of multisource remote sensing images. The generalized positive Boolean function (GPBF) classifier scheme is recently proposed based on minimum classification error (MCE) criteria to improve classification performance. It makes use of MCE criteria to apply positive and negative samples as training parameters. Unfortunately, the classification performance of GPBF is limited when the number of classes increases. This is occurred in training phase by the unbalanced numbers of positive and negative samples caused by the use of a large number of classes. The proposed KTSG overcomes this drawback by modifying the scheme from the perception of pattern-node based semi-greedy (bottom-up scheme used in GPBF) to the conception of region-based semi-greedy (also known as the top-down scheme in KTSG). It is organized by a k-way tree in which every node is composed of a set of k-dimensional positive and negative labeled samples as represented as a percentage, i.e. the corresponding ratio of number of a specific (positive) class samples to the total number of the other (negative) classes. It iteratively divides the d-dimensional hyperplane into 2d subspaces according to the centroids of the labeled (training) samples of all classes. The statistical ratios between different classes are then compared as a basis for stopping the new subspace separation and identifying which subspace belongs to which class. By delivering both positive and negative samples of different classes to KTSG learning modules, KTSG outperforms GPBF and traditional classifiers in terms of classification accuracies. The effectiveness of the proposed KTSG is evaluated by fusing MODIS/ASTER airborne simulator (MASTER) hyperspectral images and airborne synthetic aperture radar (AIRSAR) images for land cover classification during the Pacrim II campaign.
Keywords :
Boolean functions; airborne radar; geophysical image processing; greedy algorithms; image classification; radiometry; remote sensing by radar; vegetation mapping; ASTER airborne simulator; KTSG learning modules; MASTER; MODIS airborne simulator; Pacrim II campaign; airborne synthetic aperture radar images; d-dimensional hyperplane; generalized positive Boolean function; hyperspectral images; k-way tree classification; land cover classification; minimum classification error; multisource remote sensing images; negative labeled samples; positive labeled samples; semi-greedy structure; statistical ratios; Boolean functions; Classification tree analysis; Computer networks; Computer science; Error analysis; Hyperspectral imaging; Hyperspectral sensors; MODIS; Remote sensing; Space technology;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Geoscience and Remote Sensing Symposium,2009 IEEE International,IGARSS 2009
Conference_Location :
Cape Town
Print_ISBN :
978-1-4244-3394-0
Electronic_ISBN :
978-1-4244-3395-7
Type :
conf
DOI :
10.1109/IGARSS.2009.5417939
Filename :
5417939
Link To Document :
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