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Fast Single Image Super-Resolution Using a New Analytical Solution for – Problems

机译:使用新的解析解决方案快速解决单图像超分辨率问题

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This paper addresses the problem of single image super-resolution (SR), which consists of recovering a high-resolution image from its blurred, decimated, and noisy version. The existing algorithms for single image SR use different strategies to handle the decimation and blurring operators. In addition to the traditional first-order gradient methods, recent techniques investigate splitting-based methods dividing the SR problem into up-sampling and deconvolution steps that can be easily solved. Instead of following this splitting strategy, we propose to deal with the decimation and blurring operators simultaneously by taking advantage of their particular properties in the frequency domain, leading to a new fast SR approach. Specifically, an analytical solution is derived and implemented efficiently for the Gaussian prior or any other regularization that can be formulated into an -regularized quadratic model, i.e., an – optimization problem. The flexibility of the proposed SR scheme is shown through the use of various priors/regularizations, ranging from generic image priors to learning-based approaches. In the case of non-Gaussian priors, we show how the analytical solution derived from the Gaussian case can be embedded into traditional splitting frameworks, allowing the computation cost of existing algorithms to be decreased significantly. Simulation results conducted on several images with different priors illustrate the effectiveness of our fast SR approach compared with existing techniques.
机译:本文解决了单图像超分辨率(SR)的问题,该问题包括从模糊,抽取和嘈杂的版本中恢复高分辨率图像。用于单个图像SR的现有算法使用不同的策略来处理抽取和模糊运算符。除了传统的一阶梯度方法外,最近的技术还研究了基于分裂的方法,将SR问题分为易于解决的上采样和去卷积步骤。我们建议不采用这种分裂策略,而是建议利用频域中的特殊属性同时处理抽取和模糊运算符,从而导致一种新的快速SR方法。具体而言,针对高斯先验或可以公式化为正则化二次模型(即最优化问题)的任何其他正则化方法,高效地导出和实施解析解决方案。通过使用各种先验/规范化,从通用图像先验到基于学习的方法,展示了所提出的SR方案的灵活性。在非高斯先验的情况下,我们说明了如何将从高斯案例中得出的解析解嵌入到传统的拆分框架中,从而可以大大降低现有算法的计算成本。在具有不同先验条件的几幅图像上进行的仿真结果说明了与现有技术相比,我们的快速SR方法的有效性。

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