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Superresolution Image Reconstruction from Blurred Observations by Multisensors

机译:基于多传感器模糊观测的超分辨率图像重建

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Superresolution image reconstruction refers to obtaining an image at a resolution higher than that of the camera (sensor) used in recording the image. In this article, we present a joint minimization model with an objective function setup that comprises three terms: the data-fitting term (DFT), the regularization term for the reconstructed image, and the observed low-resolution images. An alternating minimization iterative algorithm is presented to reconstruct the image. We also analyze the alternating minimization iterative algorithm and show that it converges globally for H~1-norm or total-variation regularization that are functional for the reconstructed image. Numeric examples are given to illustrate the effectiveness of the joint minimization model and the efficiency of the algorithm.
机译:超分辨率图像重建是指以比用于记录图像的相机(传感器)更高的分辨率获得图像。在本文中,我们提出了一个具有目标函数设置的联合最小化模型,该模型包含三个术语:数据拟合术语(DFT),重构图像的正则化术语和观察到的低分辨率图像。提出了一种交替最小化迭代算法来重建图像。我们还分析了交替最小化迭代算法,并表明它对于H〜1范数或对重建图像具有功能的总变异正则化全局收敛。数值例子说明了联合最小化模型的有效性和算法的有效性。

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