单图像改进使用超分辨率。

Shwetambari Shinde, Meeta Dewangan
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引用次数: 1

摘要

超分辨率的方法大致可以分为两大类:(i)经典的多图像超分辨率(结合亚像素不对齐时获得的图像)和(ii)基于示例的超分辨率(从数据库中学习低分辨率和高分辨率图像补丁之间的对应关系)。在本文中,我们提出了一个统一的框架来结合这两类方法。我们进一步展示了如何将这种组合方法应用于从单个图像(没有数据库或先前的示例)获得超分辨率。我们的方法是基于这样一种观察,即自然图像中的斑块倾向于在图像内部冗余重复多次,无论是在相同的尺度内,还是在不同的尺度上。在同一图像尺度内(在亚像素不对齐时)补丁的重复出现会产生经典的超分辨率,而在同一图像的不同尺度上补丁的重复出现会产生基于实例的超分辨率。我们的方法试图在每个像素上恢复其基于尺度内和尺度间的补丁冗余的最佳分辨率增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single Image Improvement using Superresolution.
Methods for super-resolution can be broadly classified into two families of methods: (i) The classical multi-image super-resolution (combining images obtained at subpixel misalignments), and (ii) ExampleBased super-resolution (learning correspondence between low and high resolution image patches from a database). In this paper we propose a unified framework for combining these two families of methods. We further show how this combined approach can be applied to obtain super resolution from as little as a single image (with no database or prior examples). Our approach is based on the observation that patches in a natural image tend to redundantly recur many times inside the image, both within the same scale, as well as across different scales. Recurrence of patches within the same image scale (at sub pixel misalignments) gives rise to the classical super-resolution, whereas recurrence of patches across different scales of the same image gives rise to example-based super-resolution. Our approach attempts to recover at each pixel its best possible resolution increase based on its patch redundancy within and across scales.
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