Image fusion aims at the exploitation of the information conveyed by data acquired by different imaging sensors. A notable application is merging images acquired from space by panchromatic and multi- or hyper-spectral sensors that exhibit complementary spatial and spectral resolution. Multiresolution analysis has been recognized efficient for image fusion. The Generalized Laplacian Pyramid (GLP), in particular, has been proven as the most efficient scheme due to its capability of managing images whose scale ratios are fractional numbers (non-dyadic data) and to its simple and easy implementation. Data merge based on multiresolution analysis, however, requires the definition of a model establishing how the missing spatial details to be injected into the multispectral bands are extracted from the panchromatic image. The model can be global over the whole image or depend on the local space-spectral context. This paper reports results on the fusion of Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) data. Each of the five thermal infrared (TIR) images (90m) is merged with the most correlated visible-near infrared (VNIR) image (15m). Due to the 6:1 scale ratio, the GLP has been utilized. The injection of spatial details has been ruled by means of the Spectral Distortion Minimizing (SDM) model that minimises the spectral distortion between the resampled and fused images. Notwithstanding the lack of a spectral overlap between the VNIR and the TIR bands, experimental results show that the fused images keep their spectral characteristics while the spatial resolution is enhanced.

Spatial Enhancement of TIR ASTER data via VNIR images and generalized laplacian decomposition

Bruno Aiazzi;Stefano Baronti;Andrea Garzelli;
2005

Abstract

Image fusion aims at the exploitation of the information conveyed by data acquired by different imaging sensors. A notable application is merging images acquired from space by panchromatic and multi- or hyper-spectral sensors that exhibit complementary spatial and spectral resolution. Multiresolution analysis has been recognized efficient for image fusion. The Generalized Laplacian Pyramid (GLP), in particular, has been proven as the most efficient scheme due to its capability of managing images whose scale ratios are fractional numbers (non-dyadic data) and to its simple and easy implementation. Data merge based on multiresolution analysis, however, requires the definition of a model establishing how the missing spatial details to be injected into the multispectral bands are extracted from the panchromatic image. The model can be global over the whole image or depend on the local space-spectral context. This paper reports results on the fusion of Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) data. Each of the five thermal infrared (TIR) images (90m) is merged with the most correlated visible-near infrared (VNIR) image (15m). Due to the 6:1 scale ratio, the GLP has been utilized. The injection of spatial details has been ruled by means of the Spectral Distortion Minimizing (SDM) model that minimises the spectral distortion between the resampled and fused images. Notwithstanding the lack of a spectral overlap between the VNIR and the TIR bands, experimental results show that the fused images keep their spectral characteristics while the spatial resolution is enhanced.
2005
Istituto di Fisica Applicata - IFAC
Inglese
Zagajewski B., Sobczak M., Wrzesie? M., (eds)
4th EARSeL Workshop on Imaging Spectroscopy Warsaw, Poland, 26-29 April 2005
4th EARSeL Workshop on Imaging Spectroscopy. New quality in environmental studies
489
500
83-89502-02-X
http://www.earsel.org/workshops/IS_Warsaw_2005/html/index.htm
WYDZIA? GEOGRAFII i STUDIÓW REGIONALNYCH, Uniwersytet Warszawski
Warszaw
POLONIA
Sì, ma tipo non specificato
27-30 April 2005
Warsaw
Image fusion
superspectral data
ASTER
spatial detail injection
multiresolution data fusion
Pubblicazione congiunta di Warsaw University, Faculty of Geography and Regional Studies, Warsaw (Poland) e European Association of Remote Sensing Laboratories (EARSeL), Paris (France). - ISBN dell'ed. a stampa: 8389502410
4
none
Aiazzi, Bruno; Baronti, Stefano; Garzelli, Andrea; Santurri Massimo Selva, Leonardo
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/2458
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