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A Framework for Satellite Image Enhancement Using Quantum Genetic and Weighted IHS+Wavelet Fusion Method

مؤلف البحث
Usama S. MOHAMED Amal A. HAMED, Osama A. OMER
المشارك في البحث
سنة البحث
2016
مجلة البحث
International Journal of Advanced Computer Science and Applications
الناشر
IJACSA
عدد البحث
7-4
تصنيف البحث
1
صفحات البحث
8-15
موقع البحث
https://www.researchgate.net/profile/Osama_Omer4/publication/301946035_A_Framework_for_Satellite_Image_Enhancement_Using_Quantum_Genetic_and_Weighted_IHSWavelet_Fusion_Method/links/5740519108ae298602e9ebdf/A-Framework-for-Satellite-Image-Enhancement-Using
ملخص البحث

this paper examined the applicability of quantum genetic algorithms to solve optimization problems posed by satellite image enhancement techniques, particularly superresolution, and fusion. We introduce a framework starting from reconstructing the higher-resolution panchromatic image by using the subpixel-shifts between a set of lower-resolution images (registration), then interpolation, restoration, till using the higher-resolution image in pan-sharpening a multispectral image by weighted IHS+ Wavelet fusion technique. For successful superresolution, accurate image registration should be achieved by optimal estimation of subpixel-shifts. Optimal-parameters blind restoration and interpolation should be performed for the optimal quality higher-resolution image. There is a trade-off between spatial and spectral enhancement in image fusion; it is difficult for the existing methods to do the best in both aspects. The objective here is to achieve all combined requirements with optimal fusion weights, and use the parameters constraints to direct the optimization process. QGA is used to estimate the optimal parameters needed for each mathematic model in this framework “Super-resolution and fusion.” The simulation results show that the QGA-based method can be used successfully to estimate automatically the approaching parameters which need the maximal accuracy, and achieve higher quality and efficient convergence rate more than the corresponding conventional GA-based and the classic computational methods.