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http://dx.doi.org/10.7780/kjrs.2011.27.3.359

Pan-sharpening Effect in Spatial Feature Extraction  

Han, Dong-Yeob (Chonnam National University)
Lee, Hyo-Seong (Sunchon National University)
Publication Information
Korean Journal of Remote Sensing / v.27, no.3, 2011 , pp. 359-367 More about this Journal
Abstract
A suitable pan-sharpening method has to be chosen with respect to the used spectral characteristic of the multispectral bands and the intended application. The research on pan-sharpening algorithm in improving the accuracy of image classification has been reported. For a classification, preserving the spectral information is important. Other applications such as road detection depend on a sharp and detailed display of the scene. Various criteria applied to scenes with different characteristics should be used to compare the pan-sharpening methods. The pan-sharpening methods in our research comprise rather common techniques like Brovey, IHS(Intensity Hue Saturation) transform, and PCA(Principal Component Analysis), and more complex approaches, including wavelet transformation. The extraction of matching pairs was performed through SIFT descriptor and Canny edge detector. The experiments showed that pan-sharpening techniques for spatial enhancement were effective for extracting point and linear features. As a result of the validation it clearly emphasized that a suitable pan-sharpening method has to be chosen with respect to the used spectral characteristic of the multispectral bands and the intended application. In future it is necessary to design hybrid pan-sharpening for the updating of features and land-use class of a map.
Keywords
Pan-sharpening; Feature Extraction; SIFT; Segmentation; Edge;
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