In this paper, we investigate the problem of hyperspectral (HS) image spatial super-resolution via deep learning. Particularly, we focus on how to embed the high-dimensional spatial-spectral information of HS images efficiently and effectively. Specifically, in contrast to existing methods adopting empirically-designed network modules, we formulate HS embedding as an approximation of the posterior distribution of a set of carefully-defined HS embedding events, including layer-wise spatial-spectral feature extraction and network-level feature aggregation. Then, we incorporate the proposed feature embedding scheme into a source-consistent super-resolution framework that is physically-interpretable, producing lightweight PDE-Net, in which high-resolution (HR) HS images are iteratively refined from the residuals between input low-resolution (LR) HS images and pseudo-LR-HS images degenerated from reconstructed HR-HS images via probability-inspired HS embedding. Extensive experiments over three common benchmark datasets demonstrate that PDE-Net achieves superior performance over state-of-the-art methods. Besides, the probabilistic characteristic of this kind of networks can provide the epistemic uncertainty of the network outputs, which may bring additional benefits when used for other HS image-based applications. The code will be publicly available at https://github.com/jinnh/PDE-Net.
翻译:在本文中,我们通过深层学习来调查超光谱(HS)图像空间超分辨率的问题。特别是,我们侧重于如何高效和有效地嵌入HS图像的高维空间光谱信息。具体地说,与采用经验设计网络模块的现有方法不同,我们将HS嵌入为一组精心定义的HS嵌入事件的后端分布近似近似,其中包括从层到层的空间光谱特征提取和网络级特征汇总。然后,我们将拟议的功能嵌入计划纳入一个源一致的超级分辨率框架,这个框架可以实际解释,产生轻量的PDE-Net,在这个框架中,高分辨率(HR) HS图像从输入低分辨率(LR) HS图像和假LR-HS图像之间的残存中迭代相改进,通过概率激励 HS嵌入的HS嵌入。对三个通用基准数据集进行的广泛实验表明,基于PDE-Net的功能优于州-艺术方法。此外,这种网络的精确性特征将带来高分辨率特征特征,因为输入的HS-PDM/可提供其他的不确定性。