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Pan-Sharpening of Satellite Image with LBP and Adaptive IHS Basis

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IJCA Proceedings on National conference on Digital Image and Signal Processing
© 2015 by IJCA Journal
DISP 2015 - Number 2
Year of Publication: 2015
Authors:
Dharaj. Sangani
A. B. Namdurbarkar

Dharaj.sangani and A.b.namdurbarkar. Article: Pan-Sharpening of Satellite Image with LBP and Adaptive IHS Basis. IJCA Proceedings on National conference on Digital Image and Signal Processing DISP 2015(2):6-10, April 2015. Full text available. BibTeX

@article{key:article,
	author = {Dharaj.sangani and A.b.namdurbarkar},
	title = {Article: Pan-Sharpening of Satellite Image with LBP and Adaptive IHS Basis},
	journal = {IJCA Proceedings on National conference on Digital Image and Signal Processing},
	year = {2015},
	volume = {DISP 2015},
	number = {2},
	pages = {6-10},
	month = {April},
	note = {Full text available}
}

Abstract

Pan-sharpening is the process of combining low spatial resolution MS image and low spectral resolution Panchromatic image. IHS based method is popular pan-sharpening method used for efficiency, however result obtained by this method have spectral distortion. In this paper we propose a extension of AIHS method,in which edges are extracted from PAN image by applying LBP coding then HRMS is determined by weighting matrix ,which depends on edges of the PAN image and MS image . experiment is carried out on Quick bird Satellite image. Results shows that it has improvement in image quality parameter compared with IHS,HPF,Brovey, AIHS and other methods of Pan-sharpening.

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