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Morphologic gain-controlled regularization for edge-preserving super-resolution image reconstruction - Springer

机译:用于保留边缘的超分辨率图像重建的形态学增益控制正则化-Springer

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摘要

Total Variation or Bilateral Total variation-based regularization of ill-posed super-resolution (SR) problem is well established. However, the SR image reconstructed by this method produces ringing artifacts near strong edges. Second, the extension of SR Imaging to SR video always desire faster SR reconstruction process. We develop a gain-controlled-based locally adaptive regularization technique for SR reconstruction for faster convergence and more detail reconstruction while suppressing the ringing artifacts. We present an iterative process for the model and perform a series of numerical experiments to show evidence of the good performance of the numerical scheme and the proposed gain-controlled regularization.
机译:总变异或双边不适定的超分辨率(SR)问题的基于总变异的正则化已得到很好的建立。然而,通过该方法重建的SR图像在强边缘附近产生振铃伪影。其次,将SR Imaging扩展到SR视频始终需要更快的SR重建过程。我们开发了一种基于增益控制的局部自适应正则化技术,用于SR重建,以实现更快的收敛和更多细节重建,同时抑制了振铃失真。我们为模型提供了一个迭代过程,并进行了一系列数值实验,以证明数值方案和拟议的增益控制正则化性能良好。

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