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Segment-based Image Classification of Multisensor Images

Authors
이상훈
Issue Date
2012
Publisher
대한원격탐사학회
Keywords
Segment-based; Multisensor Fusion; Image Segmentation; Image Classification; Gaussian-PDF; Dempster-Shafer Evidence Theory
Citation
대한원격탐사학회지, v.28, no.6, pp.611 - 622
Journal Title
대한원격탐사학회지
Volume
28
Number
6
Start Page
611
End Page
622
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/16992
DOI
10.7780/kjrs.2012.28.6.2
ISSN
1225-6161
Abstract
This study proposed two multisensor fusion methods for segment-based image classification utilizing a region-growing segmentation. The proposed algorithms employ a Gaussian-PDF measure and an evidential measure respectively. In remote sensing application, segment-based approaches are used to extract more explicit information on spatial structure compared to pixel-based methods. Data from a single sensor may be insufficient to provide accurate description of a ground scene in image classification. Due to the redundant and complementary nature of multisensor data, a combination of information from multiple sensors can make reduce classification error rate. The Gaussian-PDF method defines a regional measure as the PDF average of pixels belonging to the region, and assigns a region into a class associated with the maximum of regional measure. The evidential fusion method uses two measures of plausibility and belief, which are derived from a mass function of the Beta distribution for the basic probability assignment of every hypothesis about region classes. The proposed methods were applied to the SPOT XS and ENVISAT data, which were acquired over Iksan area of of Korean peninsula. The experiment results showed that the segment-based method of evidential measure is greatly effective on improving the classification via multisensor fusion.
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