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Single-Frame Image Super-Resolution Using Learned Wavelet Coefficients

机译:使用学习的小波系数的单帧图像超分辨率

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摘要

We propose a single-frame, learning-based super-resolution restoration technique by using the wavelet domain to define a constraint on the solution. Wavelet coefficients at finer scales of the unknown high-resolution image are learned from a set of high-resolution training images and the learned image in the wavelet domain is used for further regularization while super-resolving the picture. We use an appropriate smoothness prior with discontinuity preservation in addition to the wavelet-based constraint to estimate the super-resolved image. The smoothness term ensures the spatial correlation among the pixels, whereas the learning term chooses the best edges from the training set. Because this amounts to extrapolating the high-frequency components, the proposed method does not suffer from oversmoothing effects. The results demonstrate the effectiveness of the proposed approach.
机译:通过使用小波域来定义解决方案的约束条件,我们提出了一种基于学习的单帧超分辨率恢复技术。从一组高分辨率训练图像中学习未知高分辨率图像的更小尺度的小波系数,并将小波域中的学习图像用于超正则化,同时对图片进行超分辨率。除了基于小波的约束之外,我们还使用具有不连续性保留的适当平滑度来估计超分辨图像。平滑度项确保像素之间的空间相关性,而学习项则从训练集中选择最佳边缘。因为这等于外推高频分量,所以所提出的方法不会遭受平滑效果。结果证明了该方法的有效性。

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