非配准高光谱和多光谱图像的深度可解释任意分辨率融合。

Jiahui Qu;Xiaoyang Wu;Wenqian Dong;Jizhou Cui;Yunsong Li
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引用次数: 0

摘要

高光谱图像与多光谱图像的融合是改善高光谱图像空间分辨率低这一固有缺陷的有效手段。然而,现有的融合方法通常在多源图像准确配准的理想假设下,将HSI的空间分辨率严格提升到匹配MSI的空间分辨率。在多源图像难以完美配准、空间分辨率要求动态变化的真实场景中,这些融合算法难以有效部署。为此,我们构建了空间-光谱一致任意尺度观测模型(S2cAsOM)来模拟未注册HSI和MSI与理想任意分辨率HSI之间的依赖关系。在此基础上,设计了求解S2cAsOM的优化算法,提出了深度可解释任意分辨率融合网络(IR&ArF)来模拟优化过程,实现了未配准HSI和MSI的模型-数据双驱动任意分辨率融合。IR&ArF以鲁棒性打破了传统融合方法对图像配准精度的依赖,能够灵活应对不同应用对HSI空间分辨率的动态需求,提高了HSI融合在真实场景中的应用能力。大量的系统实验证明了该方法的优越性和通用性。所提出的方法的源代码可在https://github.com/Jiahuiqu/IR-ArF上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IR&ArF: Toward Deep Interpretable Arbitrary Resolution Fusion of Unregistered Hyperspectral and Multispectral Images
The fusion of hyperspectral image (HSI) and multispectral image (MSI) is an effective mean to improve the inherent defect of low spatial resolution of HSI. However, existing fusion methods usually rigidly upgrade the spatial resolution of HSI to that of matching MSI under the ideal assumption that multi-source images are accurately registered. In real scenes where multi-source images are difficult to be perfectly registered and the spatial resolution requirements are dynamically different, these fusion algorithms is difficult to be effectively deployed. To this end, we construct the spatial-spectral consistent arbitrary scale observation model (S2cAsOM) to model the dependence between the unregistered HSI and MSI and the ideal arbitrary resolution HSI. Furthermore, an optimization algorithm is designed to solve S2cAsOM, and a deep interpretable arbitrary resolution fusion network (IR&ArF) is proposed to simulate the optimization process, which achieves the model-data dual-driven arbitrary resolution fusion of unregistered HSI and MSI. IR&ArF breaks the dependence of traditional fusion methods on the accuracy of image registration in a robust way, and can flexibly cope with the dynamic requirements of diverse applications for the spatial resolution of HSI, which improves the application ability of HSI fusion in real scenes. Extensive systematic experiments demonstrate the superiority and generalization of the proposed method. Source code of the proposed method is available on https://github.com/Jiahuiqu/IR-ArF.
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