DocumentCode
2219225
Title
C14. Estimation of the optimal set of parameters for PAN-sharpening of satellite images based on the Non-Sub-sampled Contourlet Transform
Author
Metwalli, Mohamed R. ; Nasr, Ayman H. ; Allah, Osama S Farag ; El-Rabaie, S. ; El-Samie, Fathi E Abd
Author_Institution
Anal. & Receiving Station Affairs Div., Nat. Authority for Remote Sensing & Space Sci., Cairo, Egypt
fYear
2012
fDate
10-12 April 2012
Firstpage
271
Lastpage
278
Abstract
Recent studies show that hybrid PAN-sharpening methods using the Non-Sub-sampled Contourlet Transform (NSCT) and classical PAN-sharpening methods like the Intensity, Hue and Saturation (IHS), Principal Component Analysis (PCA), and Adaptive Principal Component Analysis (APCA), reduce the spectral distortion in the PAN-sharpened images. The NSCT is a shift-invariant multi-resolution decomposition. It is based on Non-Sub-sampled Pyramid (NSP) decomposition and Non-Sub-sampled Directional Filter Banks (NSDFB). We compare the performance of the APCA-NSCT using different NSP filters, NSDFB filters, number of decomposition levels, and number of orientations in each level on Spot4 data with spatial resolution ratio 1/2, and QuickBird data with spatial resolution ratio 1/4. Experimental results show that the quality of PAN-sharpening of remote sensing images of different spatial resolution ratios using the APCA-NSCT method is affected by NSCT parameters. For the NSP, the `maxflat´ filters have the best quality. For NSDFB the `sk´ filters have the best quality. Changing the number of orientations in the same level of decomposition in the NSCT has a small effect on both the spectral and spatial quality. The spectral and spatial quality of PAN-sharpened images mainly depends on the number of decomposition levels. Too few decomposition levels result in poor spatial quality, while excessive levels of decomposition result in poor spectral quality.
Keywords
channel bank filters; distortion; geophysical image processing; image enhancement; image resolution; principal component analysis; remote sensing; transforms; APCA-NSCT method; IHS; NSDFB filters; NSP decomposition; NSP filters; PAN-sharpening quality; QuickBird data; Spot4 data; adaptive principal component analysis; hybrid PAN-sharpening method; intensity hue and saturation; maxflat filters; nonsub-sampled contourlet transform; nonsub-sampled directional filter banks; nonsub-sampled pyramid decomposition; optimal parameter set estimation; remote sensing images; satellite images; shift-invariant multiresolution decomposition; spatial quality; spatial resolution ratio; spectral distortion reduction; spectral quality; Computed tomography; Filter banks; Low pass filters; Principal component analysis; Spatial resolution; Transforms; APCA; NSCT; PAN-sharpening; PCA;
fLanguage
English
Publisher
ieee
Conference_Titel
Radio Science Conference (NRSC), 2012 29th National
Conference_Location
Cairo
Print_ISBN
978-1-4673-1884-6
Type
conf
DOI
10.1109/NRSC.2012.6208532
Filename
6208532
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