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Hyperspectral image super-resolution can compensate for the incompleteness of single-sensor imaging and provide desirable products with both high spatial and spectral resolution. Among them, unmixing-inspired networks have drawn considerable attention owing to their straightforward unsupervised paradigm. However, most do not fully capture and utilize the multi-modal information due to their limited representation ability of constructed networks, hence leaving large room for further improvement. To this end, we propose an X-shaped interactive autoencoders network with cross-modality mutual learning between hyperspectral and multispectral data, XINet for short, to cope with this problem. Generally, it employs a coupled structure equipped with two autoencoders, aiming at deriving latent abundances and corresponding endmembers from input correspondence. Inside the network, a novel X-shaped interactive architecture is designed by coupling two disjointed U-Nets together via a parameter-shared strategy, which not only enables sufficient information flow between two modalities but also leads to informative spatial-spectral features. Considering the complementarity across each modality, a cross-modality mutual learning module is constructed to further transfer knowledge from one modality to another, allowing for better utilization of multi-modal features. Moreover, a joint self-supervised loss is proposed to effectively optimize our proposed XINet, enabling an unsupervised manner without external triplets supervision. Extensive experiments, including super-resolved results in four datasets, robustness analysis, and extension to other applications, are conducted, and the superiority of our method is demonstrated.
Li et al. (Sun,) studied this question.
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