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Transfering Super Resolution Convolutional Neural Network For Remote Sensing Data Sharpening | IEEE Conference Publication | IEEE Xplore

Transfering Super Resolution Convolutional Neural Network For Remote Sensing Data Sharpening


Abstract:

Pansharpening process aims at fusing low-spatial/high-spectral resolutions multispectral/hyperspectral (MS/HS) remote sensing data with high-spatial resolution and withou...Show More

Abstract:

Pansharpening process aims at fusing low-spatial/high-spectral resolutions multispectral/hyperspectral (MS/HS) remote sensing data with high-spatial resolution and without spectral diversity panchromatic (PAN) ones. This paper explores different data preparation possibilities, learning strategies and architectures, used in the convolutional neural network (CNN) approaches, for improving the performance of the pansharpening process of remote sensing MS/HS data. Also, in this paper, the super resolution CNN (SRCNN) architecture is adapted by adding a normalization step in the training phase of the CNN-based pansharpening process. Then, training datasets are prepared for fitting the generalization need. Experiments based on multi-source datasets are performed to evaluate the performance of the proposed SRCNN-based pansharpening architecture. The preliminary results are promising since they show that the proposed approach is competitive with some literature methods.
Date of Conference: 23-26 September 2018
Date Added to IEEE Xplore: 27 June 2019
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Conference Location: Amsterdam, Netherlands

References

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