Hyperspectral Denoising Using Unsupervised Disentangled Spatio-Spectral Deep Priors
Yu-Chun Miao, Xi-Le Zhao, Xiao Fu, Jian-Li Wang, and Yu-Bang Zheng

TL;DR
This paper introduces an unsupervised deep image prior framework for hyperspectral image denoising, leveraging spatio-spectral decomposition to improve performance without requiring training data.
Contribution
It proposes a novel unsupervised DIP method based on spatio-spectral decomposition, reducing network complexity and enabling effective HSI denoising without training data.
Findings
Effective denoising demonstrated on semi-real and real datasets.
Incorporates natural image DIP structures into hyperspectral context.
Reduces network complexity through spectral decomposition.
Abstract
Image denoising is often empowered by accurate prior information. In recent years, data-driven neural network priors have shown promising performance for RGB natural image denoising. Compared to classic handcrafted priors (e.g., sparsity and total variation), the "deep priors" are learned using a large number of training samples -- which can accurately model the complex image generating process. However, data-driven priors are hard to acquire for hyperspectral images (HSIs) due to the lack of training data. A remedy is to use the so-called unsupervised deep image prior (DIP). Under the unsupervised DIP framework, it is hypothesized and empirically demonstrated that proper neural network structures are reasonable priors of certain types of images, and the network weights can be learned without training data. Nonetheless, the most effective unsupervised DIP structures were proposed for…
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