协同稀疏图像融合及其在泛锐化中的应用

Xiaoxiang Zhu, Claas Grohnfeldt, R. Bamler
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引用次数: 3

摘要

近年来,为了解决遥感图像的泛锐化问题,对图像块的稀疏信号表示进行了探索。虽然提出的基于稀疏重建的方法得到了令人鼓舞的结果,但它们都没有考虑到不同多光谱通道中包含的信息可能是相互相关的。在本文中,我们通过利用不同多光谱通道之间可能的信号结构相关性,将作者之前提出的图像稀疏融合(SparseFI,发音为“sparsify”)算法扩展为图像联合稀疏融合(J-SparseFI)算法。这是通过使用分布式压缩感知(DCS)理论来实现的,该理论通过考虑联合稀疏的信号集合来限制欠定系统的解。用UltraCam数据对算法进行了验证。在最后的演示中,将展示Hyspex数据的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collabrative sparse image fusion with application to pan-sharpening
Recently sparse signal representation of image patches was explored to solve the pan-sharpening problem for remote sensing images. Although the proposed sparse reconstruction based methods lead to motivating results, yet none of them has considered the fact that the information contained in different multispectral channels may be mutually correlated. In this paper, we extend the Sparse Fusion of Images (SparseFI, pronounced “sparsify”) algorithm, proposed by the authors before, to a Jointly Sparse Fusion of Images (J-SparseFI) algorithm by exploiting these possible signal structural correlations between different multispectral channels. This is done by making use of the distributed compressive sensing (DCS) theory that restricts the solution of an underdetermined system by considering an ensemble of signals being jointly sparse. The algorithm is validated with UltraCam data. In the final presentation, results with Hyspex data will be presented.
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