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A Variational Pansharpening Algorithm Based on Total Variation and Primal-Dual Optimization

机译:基于总变异和原始对偶优化的变异泛锐化算法

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This paper proposes a variational framework to estimate the high-resolution (HR) multispectral (MS) image from the low-resolution (LR) MS image and the panchromatic (Pan) image. The LR MS image is modeled as a decimation of the HR MS image. Furthermore, the Pan image is considered as a linear combination of the HR MS bands. A super-resolution (SR) model is defined in accordance with the image observation model and the total variation (TV) regularization. The SR reconstruction problem is modeled as a minimization problem, which is solved by an efficient primal-dual algorithm in a Euclidean setting. The result of comparing the proposed method with some recent classical and variational pansharpening methods proves the superiority of the proposed variational pansharpening algorithm.
机译:本文提出了一种变分框架,用于从低分辨率(LR)MS图像和全色(Pan)图像估计高分辨率(HR)多光谱(MS)图像。 LR MS图像被建模为HR MS图像的抽取。此外,平移图像被认为是HR MS频段的线性组合。根据图像观察模型和总变化量(TV)正则化定义超分辨率(SR)模型。 SR重建问题被建模为最小化问题,这是通过在欧几里得环境中使用有效的原始对偶算法来解决的。将所提出的方法与最近的经典和变分全锐化方法进行比较的结果证明了所提出的变分全锐化算法的优越性。

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