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A 2D Observation Model-Based Algorithm for Blind Single Image Super-Resolution Reconstruction

机译:基于二维观察模型的盲单图像超分辨率重构算法

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In essence, image super-resolution refers to the transformation from small size image to large size image, that is, the increase of pixel density of image can provide more detailed information. It's well-known that 1D super-resolution model can not be written directly into the form of 2D model, because the matrix dimension of high-solution image and low-solution image does not agree. The proposed 2D-based blind super-resolution algorithm combining with sparse representation model and TV term. The proposed method is to reduce the complexity of the operation by decomposing the blur matrix and the sampling matrix in the horizontal (row) and vertical (column) directions. The experimental results show that the proposed method can better protect the edge and provide more texture structure.
机译:本质上,图像超分辨率是指从小尺寸图像到大尺寸图像的转换,即图像像素密度的增加可以提供更详细的信息。众所周知,一维超分辨率模型不能直接写成二维模型,因为高分辨率图像和低分辨率图像的矩阵尺寸不一致。结合稀疏表示模型和电视术语,提出了基于二维的盲超分辨率算法。所提出的方法是通过在水平(行)和垂直(列)方向上分解模糊矩阵和采样矩阵来降低操作的复杂度。实验结果表明,该方法可以更好地保护边缘并提供更多的纹理结构。

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