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$L_{0}$ -Regularized Image Downscaling

机译:$ L_ {0} $-常规图像缩小

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摘要

In this paper, we propose a novel L0-regularized optimization framework for image downscaling. The optimization is driven by two L0-regularized priors. The first prior, gradient-ratio prior, is based on the observation that the number of edges in the downscaled image is approximately inverse square proportional to the downscaling factor. By introducing L0 norm sparsity to the gradient ratio, the downscaled image is able to preserve the most salient edges as well as the visual perception of the original image. The second prior, downsampling prior, is to constrain the downsampling matrix so that pixels of the downscaled image are estimated according to those optimal neighboring pixels. Extensive experiments on the Urban100 and BSDS500 data sets show that the proposed algorithm achieves superior performance over the state-of-the-arts, in terms of both quality and robustness.
机译:在本文中,我们提出了一种新颖的L 0 正规化的图像缩小比例优化框架。优化是由两个L 0 正规化的先验驱动的。第一先验,即梯度比先验,是基于以下观察:缩小图像中的边缘数量大约与缩小因子成比例的平方反比。通过将L 0 范数稀疏性引入梯度比,缩小后的图像能够保留最显着的边缘以及原始图像的视觉感知。第二先验,即下采样先验,是约束下采样矩阵,以便根据那些最优的相邻像素来估计出缩小图像的像素。在Urban100和BSDS500数据集上进行的大量实验表明,该算法在质量和鲁棒性方面均优于最新技术。

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