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REMOTE SENSING FOR LAND & RESOURCES    2008, Vol. 20 Issue (2) : 43-47     DOI: 10.6046/gtzyyg.2008.02.11
Technology and Methodology |
FUSION AND EVALUATION OF CBERS-02B HR AND MULTI-SPECTRAL IMAGES
 LI Jun-Jie, LI Xing-Chao, FU Qiao-Yan, HUANG Shi-Cun, WANG Qi
China Center for Resources Satellite Data and Application,Beijing 100073,China
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Abstract  

CBERS-02B satellite has a high resolution camera HR and a multi-spectral sensor CCD. HR and CCD images can be fused to form a new image which can preserve high spatial resolution of HR and high spectral resolution of CCD. HR image can also be fused with images of other sensors. The authors used six methods to fuse HR,CCD and SPOT 5 multi-spectral images and evaluated the fusion results qualitatively and quantitatively. As a result,relatively ideal methods for fusing HR and SPOT 5 multi-spectral images were found. The results indicate the potential capability of HR images for being fused with images of other sensors. A comparison has also been made between the HR & SPOT 5 multi-spectral fusion image and the HR & CCD fusion image.

Keywords Remote sensing      Linear structure      circular structure Ore-forming forecast Lanping basin     
: 

TP79

 
Issue Date: 15 July 2009
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LI Jun-Jie, LI Xing-Chao, FU Qiao-Yan, HUANG Shi-Cun, WANG Qi. FUSION AND EVALUATION OF CBERS-02B HR AND MULTI-SPECTRAL IMAGES[J]. REMOTE SENSING FOR LAND & RESOURCES,2008, 20(2): 43-47.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2008.02.11     OR     https://www.gtzyyg.com/EN/Y2008/V20/I2/43
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