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http://dx.doi.org/10.7780/kjrs.2006.22.1.75

Evidential Fusion of Multsensor Multichannel Imagery  

Lee Sang-Hoon (Department of Industrial Engineering, Kyungwon University)
Publication Information
Korean Journal of Remote Sensing / v.22, no.1, 2006 , pp. 75-85 More about this Journal
Abstract
This paper has dealt with a data fusion for the problem of land-cover classification using multisensor imagery. Dempster-Shafer evidence theory has been employed to combine the information extracted from the multiple data of same site. The Dempster-Shafer's approach has two important advantages for remote sensing application: one is that it enables to consider a compound class which consists of several land-cover types and the other is that the incompleteness of each sensor data due to cloud-cover can be modeled for the fusion process. The image classification based on the Dempster-Shafer theory usually assumes that each sensor is represented by a single channel. The evidential approach to image classification, which utilizes a mass function obtained under the assumption of class-independent beta distribution, has been discussed for the multiple sets of mutichannel data acquired from different sensors. The proposed method has applied to the KOMPSAT-1 EOC panchromatic imagery and LANDSAT ETM+ data, which were acquired over Yongin/Nuengpyung area of Korean peninsula. The experiment has shown that it is greatly effective on the applications in which it is hard to find homogeneous regions represented by a single land-cover type in training process.
Keywords
Dempster-Shafer; Evidence Theory; Data Fusion; Image Classification; Multisensor; Satellite Image;
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