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Blind Deblurring Using Internal Patch Recurrence

机译:使用内部补丁复发盲目去欺诈

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Recurrence of small image patches across different scales of a natural image has been previously used for solving ill-posed problems (e.g., super-resolution from a single image). In this paper we show how this multi-scale property can also be used for "blind-deblurring", namely, removal of an unknown blur from a blurry image. While patches repeat 'as is' across scales in a sharp natural image, this cross-scale recurrence significantly diminishes in blurry images. We exploit these deviations from ideal patch recurrence as a cue for recovering the underlying (unknown) blur kernel. More specifically, we look for the blur kernel k, such that if its effect is "undone" (if the blurry image is deconvolved with k), the patch similarity across scales of the image will be maximized. We report extensive experimental evaluations, which indicate that our approach compares favorably to state-of-the-art blind deblurring methods, and in particular, is more robust than them.
机译:以前用于解决不同尺度的小图像贴片的重复,以解决不存在的问题(例如,来自单个图像的超分辨率)。 在本文中,我们展示了这种多尺度特性如何用于“盲去去束缚”,即,从模糊图像中移除未知模糊。 虽然在尖锐的自然形象中,斑块在尺度中重复“如此”,但这种横向复发在模糊图像中显着减少。 我们利用这些偏差从理想的补丁复发作为恢复底层(未知)模糊内核的提示。 更具体地,我们寻找模糊内核K,使得如果其效果是“未完成”(如果模糊图像用K)进行解码),则图像的尺度横跨图像的贴片相似性将被最大化。 我们报告了广泛的实验评估,这表明我们的方法对最先进的盲人去纹理方法有利地进行了比较,特别是比它们更鲁棒。

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