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Degradation-Aware Metric Prompting for Hyperspectral Image Restoration

About

Unified hyperspectral image (HSI) restoration aims to recover various degraded HSIs using a single model, offering great practical value. However, existing methods often depend on explicit degradation priors (e.g., degradation labels) as prompts to guide restoration, which are difficult to obtain due to complex and mixed degradations in real-world scenarios. To address this challenge, we propose a Degradation-Aware Metric Prompting (DAMP) framework. Instead of relying on predefined degradation priors, we design spatial-spectral degradation metrics to continuously quantify multi-dimensional degradations, serving as Degradation Prompts (DP). These DP enable the model to capture cross-task similarities in degradation distributions and enhance shared feature learning. Furthermore, we introduce a Spatial-Spectral Adaptive Module (SSAM) that dynamically modulates spatial and spectral feature extraction through learnable parameters. By integrating SSAM as experts within a Mixture-of-Experts architecture, and using DP as the gating router, the framework enables adaptive, efficient, and robust restoration under diverse, mixed, or unseen degradations. Extensive experiments on natural and remote sensing HSI datasets show that DAMP achieves state-of-the-art performance and demonstrates exceptional generalization capability. Code is publicly available at https://github.com/MiliLab/DAMP.

Binfeng Wang, Di Wang, Haonan Guo, Ying Fu, Jing Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image ReconstructionICVL
PSNR51.97
12
Gaussian DeblurringPaviaU
PSNR33.84
9
Gaussian DeblurringARAD
PSNR52.84
9
Gaussian DeblurringHyRank
PSNR46.39
9
Gaussian DenoisingICVL
PSNR42.86
9
Gaussian DenoisingARAD
PSNR41.47
9
Gaussian DenoisingPaviaC
PSNR26.11
9
InpaintingPaviaC
PSNR29.41
9
InpaintingXiong'an
PSNR33.62
9
InpaintingChikusei
PSNR38.91
9
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