Abstract

Super-resolution (SR) is one of the powerful techniques to improve image quality for low-resolution (LR) hyperspectral image (HSI) with insufficient detail and noise. Traditional methods typically perform simple cascade or addition during the fusion of the auxiliary high-resolution RGB and LR HSI. As a result, the abundant HR RGB details are not utilized as a priori information to enhance the HSI feature representation, leaving room for further improvements. To address this issue, we propose an RGB-induced feature modulation network for HSI SR (IFMSR). Considering that similar patterns are common in images, a multi-corresponding patch aggregation is designed to globally assemble this contextual information, which is beneficial for feature learning. Besides, to adequately exploit plentiful HR RGB details, an RGB-induced detail enhancement (RDE) module and a deep cross-modality feature modulation (CFM) module are proposed to transfer the supplementary materials from RGB to HSI. These modules can provide a more direct and instructive representation, leading to further edge recovery. Experiments on several datasets demonstrate that our approach achieves comparable performance under more realistic degradation condition. Our code is publicly available at https://github.com/qianngli/IFMSR.

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