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An improved joint dictionary training method for single image super resolution

机译:一种改进的单图像超分辨率联合字典训练方法

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Research on image statistics suggests that image patches can be well represented as a sparse linear combination of elements from an appropriately over-complete dictionary. In this paper, an improved joint dictionary training scheme is introduced for the single image super resolution. By using different weight factors, the scheme balances two dictionaries in the high- and low- resolution spaces in the training to achieve good reconstructed images. A K-SVD algorithm is applied to learn the dictionaries. Sparse representations of low-resolution image patches are used to reconstruct the high-resolution image patches. From the experiment results, the proposed scheme outperforms the classic bicubic interpolation and neighbor embedding learning based method both qualitatively and quantitatively.
机译:对图像统计的研究表明,图像块可以很好地表示为来自适当超完备字典的元素的稀疏线性组合。本文针对单图像超分辨率引入了一种改进的联合字典训练方案。通过使用不同的权重因子,该方案可以平衡训练中高分辨率和低分辨率空间中的两个字典,以获得良好的重建图像。应用K-SVD算法学习字典。低分辨率图像斑块的稀疏表示用于重建高分辨率图像斑块。从实验结果来看,该方案在质量和数量上均优于经典的双三次插值和基于邻居嵌入学习的方法。

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