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Image Super-resolution Based On Self-similarity and Various Patch Size

机译:基于自相似度和不同色块大小的图像超分辨率

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A new single image super-resolution method based on self-similarity across different scales and pyramid model is proposed. In order to enrich the diversity of the training patches but not increase the computational complexity, we rotate the low resolution input image by a certain angle from 0° to 90° and down-sample them into 2 layers pyramid model respectively. However, most self-similarity super-resolution algorithms was carried out by the fixed size of patch. So, in this paper we observe the effect of patch size using the various patch size then pick out the most appropriate patch size. During the mapping process, we use the Fast Library for Approximate Nearest Neighbors (FLANN) to search the corresponding nine closest patches in high-frequency pyramid then carry out Gaussian weighted (SSD), which can avoid the occasionality and mismatch by using the nearest neighbor strategy. Finally, the local constraint and the iterative back projection algorithm are adopted to optimize the reconstructed image. Experimental results validate that the algorithm is better than the traditional algorithm in visual effects and computational complexity.
机译:提出了一种基于不同尺度自相似度和金字塔模型的单图像超分辨率方法。为了丰富训练补丁的多样性但不增加计算复杂度,我们将低分辨率输入图像从0°旋转到90°一定角度,并将其分别下采样为2层金字塔模型。但是,大多数自相似的超分辨率算法都是通过固定大小的补丁来执行的。因此,在本文中,我们使用各种补丁大小观察补丁大小的影响,然后挑选出最合适的补丁大小。在映射过程中,我们使用近似最近邻居快速库(FLANN)在高频金字塔中搜索相应的九个最近补丁,然后执行高斯加权(SSD),这可以通过使用最近邻居来避免偶然性和不匹配战略。最后,采用局部约束和迭代反投影算法对重建图像进行优化。实验结果证明,该算法在视觉效果和计算复杂度上均优于传统算法。

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