HIR-ALIGN: Enhancing Hyperspectral Image Restoration via Diffusion-Based Data Generation
Li Pang, Heng Zhao, Yijia Zhang, Deyu Meng, and Xiangyong Cao

TL;DR
HIR-ALIGN is a novel framework that enhances hyperspectral image restoration by generating target-aligned synthetic data, enabling better adaptation to target domains without requiring additional real data.
Contribution
It introduces a plug-and-play augmentation method combining proxy generation, diffusion-based synthesis, and spectral transfer for improved hyperspectral image restoration.
Findings
Outperforms source-only supervised models on simulated and real datasets.
Effectively improves denoising and super-resolution tasks.
Provides theoretical analysis on risk reduction through augmentation.
Abstract
Hyperspectral image (HSI) restoration is crucial for reliable analysis, as real HSIs suffer from degradations like noise, blur, and resolution loss. However, existing models trained on source data often fail on target domains lacking clean references, a common occurrence in practice. To address this issue, we present HIR-ALIGN, a plug-and-play target-adaptive augmentation framework that enhances hyperspectral image restoration by augmenting limited training images with synthetic data that closely matches the target distribution using no extra data. It consists of three stages: (i) proxy generation, where off-the-shelf restoration models restore degraded target observations to produce semantics-preserving proxy HSIs that approximate target-domain clean images; (ii) distribution-adaptive synthesis, where a blur-robust unCLIP diffusion model generates target-aligned RGBs from proxy RGBs,…
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