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用于RGB光谱超分辨率的解混引导无监督网络。

Unmixing Guided Unsupervised Network for RGB Spectral Super-Resolution.

作者信息

Qu Qiaoying, Pan Bin, Xu Xia, Li Tao, Shi Zhenwei

出版信息

IEEE Trans Image Process. 2023;32:4856-4867. doi: 10.1109/TIP.2023.3299197. Epub 2023 Sep 1.

DOI:10.1109/TIP.2023.3299197
PMID:37527312
Abstract

Spectral super-resolution has attracted research attention recently, which aims to generate hyperspectral images from RGB images. However, most of the existing spectral super-resolution algorithms work in a supervised manner, requiring pairwise data for training, which is difficult to obtain. In this paper, we propose an Unmixing Guided Unsupervised Network (UnGUN), which does not require pairwise imagery to achieve unsupervised spectral super-resolution. In addition, UnGUN utilizes arbitrary other hyperspectral imagery as the guidance image to guide the reconstruction of spectral information. The UnGUN mainly includes three branches: two unmixing branches and a reconstruction branch. Hyperspectral unmixing branch and RGB unmixing branch decompose the guidance and RGB images into corresponding endmembers and abundances respectively, from which the spectral and spatial priors are extracted. Meanwhile, the reconstruction branch integrates the above spectral-spatial priors to generate a coarse hyperspectral image and then refined it. Besides, we design a discriminator to ensure that the distribution of generated image is close to the guidance hyperspectral imagery, so that the reconstructed image follows the characteristics of a real hyperspectral image. The major contribution is that we develop an unsupervised framework based on spectral unmixing, which realizes spectral super-resolution without paired hyperspectral-RGB images. Experiments demonstrate the superiority of UnGUN when compared with some SOTA methods.

摘要

光谱超分辨率最近引起了研究关注,其旨在从RGB图像生成高光谱图像。然而,现有的大多数光谱超分辨率算法以监督方式工作,需要成对数据进行训练,而这很难获得。在本文中,我们提出了一种解混引导无监督网络(UnGUN),其无需成对图像即可实现无监督光谱超分辨率。此外,UnGUN利用任意其他高光谱图像作为引导图像来指导光谱信息的重建。UnGUN主要包括三个分支:两个解混分支和一个重建分支。高光谱解混分支和RGB解混分支分别将引导图像和RGB图像分解为相应的端元和丰度,从中提取光谱和空间先验信息。同时,重建分支整合上述光谱-空间先验信息以生成粗高光谱图像,然后对其进行细化。此外,我们设计了一个判别器,以确保生成图像的分布接近引导高光谱图像,从而使重建图像遵循真实高光谱图像的特征。主要贡献在于我们开发了一种基于光谱解混的无监督框架,其无需成对的高光谱-RGB图像即可实现光谱超分辨率。实验证明了UnGUN与一些先进方法相比的优越性。

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