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PanNet: A Deep Network Architecture for Pan-Sharpening

746

Citations

26

References

2017

Year

Abstract

We propose a deep network architecture for the pan-sharpening problem called PanNet. We incorporate domain-specific knowledge to design our PanNet architecture by focusing on the two aims of the pan-sharpening problem: spectral and spatial preservation. For spectral preservation, we add up-sampled multispectral images to the network output, which directly propagates the spectral information to the reconstructed image. To preserve spatial structure, we train our network parameters in the high-pass filtering domain rather than the image domain. We show that the trained network generalizes well to images from different satellites without needing retraining. Experiments show significant improvement over state-of-the-art methods visually and in terms of standard quality metrics.

References

YearCitations

2016

214.9K

2014

11.1K

2015

9.5K

2002

5.7K

1997

1.3K

2016

1.1K

1998

965

1990

875

2008

855

2005

831

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