Degradation-Aware Dynamic Kernel Generation Network for Hyperspectral Super-Resolution
Huadong Liu, Haifeng Liang, Qian Wang

TL;DR
This paper introduces a new network for improving high-resolution hyperspectral images by adapting to complex degradation patterns.
Contribution
The novel DADFN method dynamically generates blur kernels and uses a multi-scale loss function for better hyperspectral super-resolution.
Findings
The DADFN algorithm outperforms baseline methods on benchmark datasets.
The method shows strong robustness in complex real-world degradation scenarios.
It balances physical interpretability with performance superiority in hyperspectral imaging.
Abstract
Addressing the problems of the difficulty in reconstructing high-resolution hyperspectral images caused by dynamic degradation characteristics, the poor adaptability of traditional static degradation models, and the oversimplified noise modeling, this paper proposes a degradation-aware dynamic Fourier network (DADFN) for hyperspectral super-resolution. This method employs a dual-channel split module to decouple and encode spectral and spatial degradation information, realizes the independent mapping of spectral and spatial features via a multi-layer perceptron module, and integrates a spectral–spatial dynamic cross-attention fusion module to generate 3D dynamic blur kernels tailored to different bands and spatial positions. The proposed method designs a multi-scale spectral–spatial collaborative constraint (MSSCC) loss function to ensure the coordinated optimization of modeling…
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Taxonomy
TopicsAdvanced Image Fusion Techniques · Advanced Image Processing Techniques · Remote-Sensing Image Classification
