Sparse Representation of Injected Details for MRA-Based Pansharpening

Mehran Maneshi, H. Ghassemian, M. Imani
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引用次数: 3

Abstract

Pansharpening is a notable remote sensing topic in which high spatial resolution panchromatic image and low spatial resolution multi-spectral image are being fused in order to receive the high spatial resolution multi-spectral image. This paper presents a hybrid pansharpening method based on MRA framework and the sparse representation of injected details. To add spatial details of the panchromatic image into the multispectral image more effectively, the injection gains are computed through an iterative full-scale model in which the gains are updated at each iteration relying on its previous iteration’s fusion product. The proposed method is compared with five pansharpening approaches to investigate the effectiveness. Experiments have been implemented on two data sets from the Pleiades and GeoEye-1 satellites both at reduced and full scale. In terms of visual and quantity assessment, the high-resolution MS image produced by the proposed method is more acceptable than those images fused by other rival approaches.
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基于核磁共振的泛锐化注入细节的稀疏表示
泛锐化是将高空间分辨率全色图像与低空间分辨率多光谱图像融合以获得高空间分辨率多光谱图像的遥感研究热点。提出了一种基于MRA框架和注入细节稀疏表示的混合泛锐化方法。为了更有效地将全色图像的空间细节添加到多光谱图像中,通过迭代全尺寸模型计算注入增益,该模型在每次迭代时根据其前一次迭代的融合积更新增益。将该方法与五种pansharpening方法进行了比较,以考察其有效性。对来自昴星团和GeoEye-1卫星的两组数据集进行了缩小和全尺寸的实验。在视觉和质量评价方面,该方法产生的高分辨率MS图像比其他方法融合的图像更容易被接受。
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