IVCVFeb 4, 2024

Physics-Inspired Degradation Models for Hyperspectral Image Fusion

arXiv:2402.02411v12 citationsh-index: 23
AI Analysis

This work addresses the issue of unsatisfactory fusion performance in practical scenarios for researchers in remote sensing and image processing, though it is incremental as it builds on existing fusion methods.

The paper tackles the problem of hyperspectral image fusion by proposing physics-inspired degradation models to improve performance in practical scenarios, resulting in boosted fusion performance for existing methods as demonstrated in comprehensive experiments.

The fusion of a low-spatial-resolution hyperspectral image (LR-HSI) with a high-spatial-resolution multispectral image (HR-MSI) has garnered increasing research interest. However, most fusion methods solely focus on the fusion algorithm itself and overlook the degradation models, which results in unsatisfactory performance in practical scenarios. To fill this gap, we propose physics-inspired degradation models (PIDM) to model the degradation of LR-HSI and HR-MSI, which comprises a spatial degradation network (SpaDN) and a spectral degradation network (SpeDN). SpaDN and SpeDN are designed based on two insights. First, we employ spatial warping and spectral modulation operations to simulate lens aberrations, thereby introducing non-uniformity into the spatial and spectral degradation processes. Second, we utilize asymmetric downsampling and parallel downsampling operations to separately reduce the spatial and spectral resolutions of the images, thus ensuring the matching of spatial and spectral degradation processes with specific physical characteristics. Once SpaDN and SpeDN are established, we adopt a self-supervised training strategy to optimize the network parameters and provide a plug-and-play solution for fusion methods. Comprehensive experiments demonstrate that our proposed PIDM can boost the fusion performance of existing fusion methods in practical scenarios.

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