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Single image super-resolution via low-rank tensor representation and hierarchical dictionary learning

机译:单图像超分辨率通过低级张量表示和分层字典学习

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Super-resolution (SR) has been widely studied due to its importance in real applications and scenarios. In this paper, we focus on generating an SR image from a single low-resolution (LR) input image by employing the multi-resolution structures of an input image. By taking the LR image and its downsampled resolution (DR) and upsampled resolution (UR) versions as inputs, we propose a hierarchical dictionary learning approach to learn the latent UR-LR dictionary pair by preserving the internal structure coherence with the LR-DR dictionary pair. Note that an imposed restriction involved in this process is that the pairwise resolution images are jointly trained to obtain more compact patterns of image patches. In particular, to better explore the underlying structures of tensor data spanned by image patches, we propose a low-rank tensor approximation (LRTA) algorithm based on nuclear-norm regu-larization to embed input image patches into a low-dimensional space. Experimental results from publicly used images show that our proposed method achieves performance comparable with that of other state-of-the-art SR algorithms, even without using any external training databases.
机译:由于其在真实应用和场景中的重要性,超级分辨率(SR)已被广泛研究。在本文中,我们专注于通过采用输入图像的多分辨率结构来从单个低分辨率(LR)输入图像中生成SR图像。通过将LR图像及其下采样的分辨率(DR)和UPS采样的分辨率(UR)版本作为输入,我们提出了一种分层字典学习方法来通过保留与LR-DR字典的内部结构相干来学习潜伏UR-LR字典对。一对。注意,在该过程中涉及的强加限制是联合训练成对分辨率图像以获得更紧凑的图像贴片图案。特别地,为了更好地探索由图像斑块跨越的张量数据的底层结构,我们提出了一种基于核规范调节的低级张量近似(LRTA)算法,以将输入图像斑块嵌入到低维空间中。公开使用的图像的实验结果表明,即使不使用任何外部训练数据库,我们所提出的方法也可以与其他最先进的SR算法相当的性能。

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