Learning Spatial-Spectral Prior for Super-Resolution of Hyperspectral Imagery
May 18, 2020 Β· Entered Twilight Β· π IEEE Transactions on Computational Imaging
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Repo contents: README.md, SSPSR.py, checkpoints, common.py, data, datasets, demo.sh, figs, loss.py, mains.py, mcodes, metrics.py, runs, trained_model, utils.py
Authors
Junjun Jiang, He Sun, Xianming Liu, Jiayi Ma
arXiv ID
2005.08752
Category
eess.IV: Image & Video Processing
Cross-listed
cs.CV,
cs.LG,
cs.MM
Citations
263
Venue
IEEE Transactions on Computational Imaging
Repository
https://github.com/junjun-jiang/SSPSR
β 122
Last Checked
1 month ago
Abstract
Recently, single gray/RGB image super-resolution reconstruction task has been extensively studied and made significant progress by leveraging the advanced machine learning techniques based on deep convolutional neural networks (DCNNs). However, there has been limited technical development focusing on single hyperspectral image super-resolution due to the high-dimensional and complex spectral patterns in hyperspectral image. In this paper, we make a step forward by investigating how to adapt state-of-the-art residual learning based single gray/RGB image super-resolution approaches for computationally efficient single hyperspectral image super-resolution, referred as SSPSR. Specifically, we introduce a spatial-spectral prior network (SSPN) to fully exploit the spatial information and the correlation between the spectra of the hyperspectral data. Considering that the hyperspectral training samples are scarce and the spectral dimension of hyperspectral image data is very high, it is nontrivial to train a stable and effective deep network. Therefore, a group convolution (with shared network parameters) and progressive upsampling framework is proposed. This will not only alleviate the difficulty in feature extraction due to high-dimension of the hyperspectral data, but also make the training process more stable. To exploit the spatial and spectral prior, we design a spatial-spectral block (SSB), which consists of a spatial residual module and a spectral attention residual module. Experimental results on some hyperspectral images demonstrate that the proposed SSPSR method enhances the details of the recovered high-resolution hyperspectral images, and outperforms state-of-the-arts. The source code is available at \url{https://github.com/junjun-jiang/SSPSR
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