TL;DR
This paper introduces SDANet, a novel hyperspectral image super-resolution framework that adaptively suppresses spectral redundancy and enhances non-linear modeling using dynamic attention and frequency domain features.
Contribution
The paper presents SDANet, combining dynamic channel sparse attention and frequency-enhanced feed-forward networks for improved hyperspectral image super-resolution.
Findings
SDANet achieves state-of-the-art performance on benchmark datasets.
The method maintains competitive efficiency while improving accuracy.
Extensive experiments validate the effectiveness of the proposed modules.
Abstract
Hyperspectral image super-resolution is essential for enhancing the spatial fidelity of HSI data, yet existing deep learning methods often struggle with substantial spectral redundancy and the limited non-linear modeling capacity of standard feed-forward networks (FFNs). To address these challenges, we propose Spectral Dynamic Attention Network (SDANet), a framework designed to adaptively suppress redundant spectral interactions. SDANet integrates two key components: 1) Dynamic Channel Sparse Attention (DCSA) module that computes channel-wise correlations and selectively preserves the most informative attention responses through dynamic and data-dependent sparsification. 2) Frequency-Enhanced Feed-Forward Network (FE-FFN) that jointly models spatial and frequency-domain representations to enhance non-linear expressiveness. Extensive experiments on two benchmark datasets demonstrate that…
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