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首页> 外文期刊>IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences >Image Quality Enhancement for Single-Image Super Resolution Based on Local Similarities and Support Vector Regression
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Image Quality Enhancement for Single-Image Super Resolution Based on Local Similarities and Support Vector Regression

机译:基于局部相似度和支持向量回归的单图像超分辨率图像质量增强

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摘要

In reconstruction-based super resolution, a high-resolution image is estimated using multiple low-resolution images with sub-pixel misalignments. Therefore, when only one low-resolution image is available, it is generally difficult to obtain a favorable image. This letter proposes a method for overcoming this difficulty for single- image super resolution. In our method, after interpolating pixel values at sub-pixel locations on a patch-by-patch basis by support vector regression, in which learning samples are collected within the given image based on local similarities, we solve the regularized reconstruction problem with a sufficient number of constraints. Evaluation experiments were performed for artificial and natural images, and the obtained high-resolution images indicate the high-frequency components favorably along with improved PSNRs.
机译:在基于重建的超分辨率中,使用具有子像素未对准的多个低分辨率图像来估计高分辨率图像。因此,当仅可获得一个低分辨率图像时,通常难以获得良好的图像。这封信提出了一种克服这种困难的方法,用于单图像超分辨率。在我们的方法中,在通过支持向量回归逐个补丁地对子像素位置的像素值进行插值后,其中基于局部相似性在给定图像内收集学习样本,我们用足够的分辨率解决了正则化重构问题约束数量。对人造图像和自然图像进行了评估实验,获得的高分辨率图像显示了高频成分以及改善的PSNR。

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