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Single Image Super Resolution Algorithm with a New Dictionary Learning Technique K-Eigen Decomposition

机译:单个图像超分辨率算法与新词典学习技术K-eIGen分解

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In this paper, we propose an algorithm to improve some important details of sparse representation based image super resolution (SR) framework. Firstly, a new dictionary learning technique K-Eigen decomposition (K-EIG) is proposed. It improves the classical K-SVD algorithm in dictionary atom updating. K-EIG accelerates the learning process and keeps the similar performance of the learned dictionary. Secondly, image patch classification and edge patches extension are integrated into the SR framework. Two over-complete dictionary-pairs are trained based on K-EIG. In reconstruction, the input low resolution (LR) image is split into patches and each one is classified. The patch type decides which dictionary-pair is chosen. Then the sparse representation coefficient of the LR signal is inferred and the corresponding high resolution (HR) patch can be reconstructed. Experimental results prove that our algorithm can obtain competitive SR performance when compared with some classical methods. Besides, the time-consuming of dictionary-pair learning is lower.
机译:在本文中,我们提出了一种算法来改进基于稀疏表示的图像超分辨率(SR)框架的一些重要细节。首先,提出了一种新的字典学习技术K-EIGEN分解(K-EIG)。它改善了字典原子更新中的古典K-SVD算法。 K-EIG加速了学习过程并保持了学习词典的类似性。其次,图像补丁分类和边缘修补程序扩展集成到SR框架中。两个完整的字典 - 基于K-EIG培训。在重建中,输入低分辨率(LR)图像被分成斑块,每个都被分类。修补程序类型确定选择哪个字典配对。然后推断LR信号的稀疏表示系数,并且可以重建相应的高分辨率(HR)贴片。实验结果证明,与一些经典方法相比,我们的算法可以获得竞争性SR性能。此外,耗时的字典 - 对学习较低。

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