Spectral-Spatial Dual Graph Unfolding Network for Multispectral and Hyperspectral Image Fusion
Recently, deep neural network (DNN)-based methods have achieved good results in terms of the fusion of low spatial resolution hyperspectral (LR HS) and high spatial resolution multispectral (HR MS) images. However, the spectral band correlation (SBC) and the spatial nonlocal similarity (SNS) in hype...
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Veröffentlicht in: | IEEE transactions on geoscience and remote sensing 2024, Vol.62, p.1-1 |
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Zusammenfassung: | Recently, deep neural network (DNN)-based methods have achieved good results in terms of the fusion of low spatial resolution hyperspectral (LR HS) and high spatial resolution multispectral (HR MS) images. However, the spectral band correlation (SBC) and the spatial nonlocal similarity (SNS) in hyperspectral (HS) images are not sufficiently exploited by them. To model the two priors efficiently, we propose a spectral-spatial dual graph unfolding network (SDGU-Net), which is derived from the optimization of graph regularized restoration models. Specifically, we introduce spectral and spatial graphs to regularize the reconstruction of the desired high spatial resolution hyperspectral (HR HS) image. To explore the SBC and SNS priors of HS images in feature space and utilize the powerful learning ability of DNNs simultaneously, the iterative optimization of the spectral and spatial graph regularized models is unfolded as a network, which is composed of spectral and spatial graph unfolding modules. The two kinds of modules are designed according to the solutions of the spectral and spatial graph regularized models. In these modules, we employ graph convolution networks (GCNs) to capture the SBC and SNS in the fused image. Then, the learned features are integrated by the corresponding feature fusion modules and fed into the feature condense module to generate the HR HS image. We conduct extensive experiments on three benchmark datasets and the results demonstrate the effectiveness of our proposed SDGU-Net. |
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ISSN: | 0196-2892 1558-0644 |
DOI: | 10.1109/TGRS.2024.3365719 |