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Learning Based Single Image Super Resolution Using Discrete Wavelet Transform

机译:基于学习的离散小波变换单图像超分辨率

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摘要

Sparse representation has attracted considerable attention in image restoration field recently. In this paper, we study the implementation of sparse representation on single-image super resolution problem. In recent research, first and second-order derivatives are always used as features for patches to be trained as dictionaries. In this paper, we proposed a novel single image super resolution algorithm based on sparse representation with considering the effect of significant features. Therefore, the super resolution problem is approached from the viewpoint of preservation of high frequency details using discrete wavelet transform. The dictionaries are constructed from the distinctive features using K-SVD dictionary training algorithm. The proposed algorithm was tested on 'Setl4' dataset. The proposed algorithm recovers the edges better as well as improving the computational efficiency. The quantitative, visual results and experimental time comparisons show the superiority and competitiveness of the proposed method over the simplest techniques and state-of-art SR algorithm.
机译:稀疏表示最近在图像恢复领域中引起了相当大的关注。在本文中,我们研究了稀疏表示在单图像超分辨率问题上的实现。在最近的研究中,一阶和二阶导数始终用作补丁的特征,以将其训练为词典。考虑到重要特征的影响,提出了一种基于稀疏表示的单图像超分辨率新算法。因此,从使用离散小波变换保留高频细节的观点出发,解决了超分辨率问题。使用K-SVD词典训练算法从独特的特征中构造出词典。所提出的算法已在“ Set14”数据集上进行了测试。所提出的算法可以更好地恢复边缘并提高计算效率。定量,视觉结果和实验时间比较显示了该方法相对于最简单的技术和最新的SR算法的优越性和竞争力。

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