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Remote sensing image fusion via compressive sensing

机译:通过压缩感测进行遥感图像融合

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In this paper, we propose a compressive sensing-based method to pan-sharpen the low-resolution multispectral (LRM) data, with the help of high-resolution panchromatic (HRP) data. In order to successfully implement the compressive sensing theory in pan-sharpening, two requirements should be satisfied: (i) forming a comprehensive dictionary in which the estimated coefficient vectors are sparse; and (ii) there is no correlation between the constructed dictionary and the measurement matrix. To fulfill these, we propose two novel strategies. The first is to construct a dictionary that is trained with patches across different image scales. Patches at different scales or equivalently multiscale patches provide texture atoms without requiring any external database or any prior atoms. The redundancy of the dictionary is removed through K-singular value decomposition (K-SVD). Second, we design an iterative l(1) - l(2) minimization algorithm based on alternating direction method of multipliers (ADMM) to seek the sparse coefficient vectors. The proposed algorithm stacks missing high-resolution multispectral (HRM) data with the captured LRM data, so that the latter is used as a constraint for the estimation of the former during the process of seeking the representation coefficients. Three datasets are used to test the performance of the proposed method. A comparative study between the proposed method and several state-ofthe-art ones shows its effectiveness in dealing with complex structures of remote sensing imagery.
机译:在本文中,我们提出了一种基于压缩感测的方法,借助高分辨率全色(HRP)数据对低分辨率多光谱(LRM)数据进行全景处理。为了在泛锐化中成功地实现压缩感测理论,应满足两个要求:(i)形成一个综合字典,其中估计的系数向量是稀疏的; (ii)所构建的字典与测量矩阵之间没有相关性。为了实现这些,我们提出了两种新颖的策略。首先是构建一个字典,该字典使用跨不同图像比例尺的补丁进行训练。不同比例的补丁或等效的多比例补丁可提供纹理原子,而无需任何外部数据库或任何先前的原子。通过K奇异值分解(K-SVD)消除了字典的冗余。其次,我们设计了一种基于乘数交替方向方法(ADMM)的迭代l(1)-l(2)最小化算法,以寻找稀疏系数向量。所提出的算法将丢失的高分辨率多光谱(HRM)数据与捕获的LRM数据进行堆叠,以便在寻找表示系数的过程中将后者用作前者估计的约束。使用三个数据集来测试所提出方法的性能。通过对所提方法与几种最新方法的比较研究,表明该方法在处理遥感影像的复杂结构方面是有效的。

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