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Image Super-Resolution Based on MCA and Dictionary Learning

机译:基于MCA和字典学习的图像超分辨率

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Image super-resolution focuses on achieving the high-resolution version of single or multiple low-resolution images. In this paper, a novel super-resolution approach based on morphological component analysis (MCA) and dictionary learning is proposed in this paper. The approach can recover each hierarchical structure well for the reconstructed image. It is integrated mainly by the dictionary learning step and high-resolution image reconstruction step. In the first step, the high-resolution and low-resolution dictionary pairs are trained based on MCA and sparse representation. In the second step, the high-resolution image is reconstructed by the fusion between the high-resolution cartoon part and texture part. The cartoon is acquired by MCA from the interpolated source image. The texture is recovered by the dictionary pairs. Experiments show that the desired super-resolution results can be achieved by the approach based on MCA and dictionary learning.
机译:图像超分辨率致力于实现单个或多个低分辨率图像的高分辨率版本。本文提出了一种基于形态成分分析(MCA)和字典学习的超分辨率新方法。该方法可以很好地恢复重建图像的每个分层结构。它主要通过字典学习步骤和高分辨率图像重建步骤进行集成。第一步,基于MCA和稀疏表示来训练高分辨率和低分辨率字典对。在第二步中,通过高分辨率卡通部分和纹理部分之间的融合来重建高分辨率图像。 MCA从插值源图像中获取卡通。通过字典对恢复纹理。实验表明,通过基于MCA和字典学习的方法可以实现所需的超分辨率结果。

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