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Learning sparse image representation with support vector regression for single-image super-resolution

机译:通过支持向量回归学习稀疏图像表示以实现单图像超分辨率

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Learning-based approaches for super-resolution (SR) have been studied in the past few years. In this paper, a novel single-image SR framework based on the learning of sparse image representation with support vector regression (SVR) is presented. SVR is known to offer excellent generalization ability in predicting output class labels for input data. Given a low resolution image, we approach the SR problem as the estimation of pixel labels in its high resolution version. The feature considered in this work is the sparse representation of different types of image patches. Prior studies have shown that this feature is robust to noise and occlusions present in image data. Experimental results show that our method is quantitatively more effective than prior work using bicubic interpolation or SVR methods, and our computation time is significantly less than that of existing SVR-based methods due to the use of sparse image representations.
机译:在过去的几年中,已经研究了基于学习的超分辨率(SR)方法。本文提出了一种基于稀疏图像表示与支持向量回归(SVR)的学习的新型单图像SR框架。众所周知,SVR在预测输入数据的输出类别标签方面具有出色的概括能力。给定低分辨率图像,我们将SR问题作为高分辨率版本中像素标签的估计。在这项工作中考虑的功能是不同类型的图像补丁的稀疏表示。先前的研究表明,此功能对于图像数据中存在的噪声和遮挡具有鲁棒性。实验结果表明,与使用双三次插值或SVR方法的先前工作相比,我们的方法在数量上更有效,并且由于使用了稀疏图像表示,我们的计算时间明显少于现有的基于SVR的方法。

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