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An iterative image super-resolution approach based on Bregman distance

机译:一种基于Bregman距离的迭代图像超分辨率方法

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摘要

The aim of super-rescilution (SR) algorithms is to recover high-resolution (HR) images and videos from low resolution (LR) ones. Since the SR is considered as an ill-posed minimization problem, regularization techniques are then considered. The choice of the regularization term plays a major role in the quality of the obtained HR image. Even if many terms have been proposed in the literature, they still suffer from different undesirable artifacts. To address these weaknesses, we propose a variational SR model based on Huber-Norm using Bregman distances. This offers the new model to be more consistent against contrast loss and smoothing gray values, in contrast, strong edges and contours are well preserved in the reconstruct HR image. Moreover, the use of first-order primal dual algorithm with an adaptive regularization parameter choice assure the convergence to the desired HR image, in a fast way, preserving important image features. As a result, the proposed algorithm shows promising results for various real and synthetic datasets compared with other methods. (C) 2017 Elsevier B.V. All rights reserved.
机译:超级播放(SR)算法的目的是从低分辨率(LR)恢复高分辨率(HR)图像和视频。由于SR被认为是一种不存在的最小化问题,因此将考虑正则化技术。正则化术语的选择在获得的HR图像的质量中起主要作用。即使在文献中提出了许多术语,它们仍然患有不同的不良文物。为了解决这些弱点,我们提出了一种基于Huber-Norm的变分SR模型,使用Bregman距离。这提供了新的模型,以更加符合对比度损失和平滑灰度值,相比之下,强边和轮廓在重建HR图像中保存得很好。此外,使用具有自适应正则化参数选择的一阶原始双向算法以快速方式确保收敛到所需的HR图像,保持重要的图像特征。结果,该算法显示了与其他方法相比各种实际和合成数据集的有希望的结果。 (c)2017 Elsevier B.v.保留所有权利。

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