Title :
General shearlet pansharpening method using Bayesian inference
Author :
Amro, Islam ; Mateos, Javier
Author_Institution :
Comput. Inf. Syst. Dept., Al-Quds Open Univ., Hebron, Palestinian Authority
Abstract :
Pansharpening is a technique that fuses the information of a low resolution multispectral image and a high resolution panchromatic image, usually remote sensing images, to produce a high resolution multispectral image. In the literature, this task has been addressed from different points of view being one of the most popular the wavelets and contourlet based algorithms. Recently, the shearlet transform, has been proposed. This transform combines the advantages of the wavelets and contourlet transform, with a more efficient directional information representation. In this paper we propose a new shearlet based pansharpening algorithm that generalizes a number of pansharpening approaches and compare it with contourlet based and shearlet based methods. The performance of the proposed shearlet based method is assessed numerically and visually for synthetic and SPOT images.
Keywords :
belief networks; geophysical image processing; image representation; image resolution; inference mechanisms; remote sensing; wavelet transforms; Bayesian inference; SPOT images; contourlet based algorithms; directional information representation; general shearlet pansharpening method; high resolution panchromatic image; low resolution multispectral image; remote sensing images; shearlet transform; synthetic images; wavelets transform; Image edge detection; Inference algorithms; Mathematical model; PSNR; Bayesian Inference; Pansharpening; Remote sensing; shearlet transform;
Conference_Titel :
Signal Processing: Algorithms, Architectures, Arrangements, and Applications (SPA), 2013
Conference_Location :
Poznan
Electronic_ISBN :
2326-0262