4.7 Article

Model-Guided Deep Hyperspectral Image Super-Resolution

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 30, Issue -, Pages 5754-5768

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2021.3078058

Keywords

Iterative algorithms; Computational modeling; Superresolution; Optimization; Linear programming; Inverse problems; Hyperspectral imaging; Hyperspectral image super-resolution; model-guided network design; image fusion; deep convolutional network

Funding

  1. National Key Research and Development Program of China [2018AAA0101400]
  2. Natural Science Foundation of China [61991451, 61632019, 61621005, 61836008]
  3. NSF [IIS-1951504, OAC-1940855]
  4. Department of Justice/National Institute of Justice (DoJ/NIJ) [NIJ 2018-75-CX-0032]
  5. WV Higher Education Policy Commission [HEPC.dsr.18.5]

Ask authors/readers for more resources

The trade-off between spatial and spectral resolution is a fundamental issue in hyperspectral images. Model-based image fusion methods and deep learning-based methods have been proposed for hyperspectral pan-sharpening, but there is still room for improvement. The MoG-DCN algorithm proposed in this paper outperforms leading HSISR methods in terms of both implementation cost and visual quality.
The trade-off between spatial and spectral resolution is one of the fundamental issues in hyperspectral images (HSI). Given the challenges of directly acquiring high-resolution hyperspectral images (HR-HSI), a compromised solution is to fuse a pair of images: one has high-resolution (HR) in the spatial domain but low-resolution (LR) in spectral-domain and the other vice versa. Model-based image fusion methods including pan-sharpening aim at reconstructing HR-HSI by solving manually designed objective functions. However, such hand-crafted prior often leads to inevitable performance degradation due to a lack of end-to-end optimization. Although several deep learning-based methods have been proposed for hyperspectral pan-sharpening, HR-HSI related domain knowledge has not been fully exploited, leaving room for further improvement. In this paper, we propose an iterative Hyperspectral Image Super-Resolution (HSISR) algorithm based on a deep HSI denoiser to leverage both domain knowledge likelihood and deep image prior. By taking the observation matrix of HSI into account during the end-to-end optimization, we show how to unfold an iterative HSISR algorithm into a novel model-guided deep convolutional network (MoG-DCN). The representation of the observation matrix by subnetworks also allows the unfolded deep HSISR network to work with different HSI situations, which enhances the flexibility of MoG-DCN. Extensive experimental results are reported to demonstrate that the proposed MoG-DCN outperforms several leading HSISR methods in terms of both implementation cost and visual quality. The code is available at https://see.xidian.edu.cn/faculty/wsdong/Projects/MoG-DCN.htm.

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