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Neighbor embedding based single-image super-resolution using Semi-Nonnegative Matrix Factorization

机译:使用半负矩阵分解的基于邻居嵌入的单图像超分辨率

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This paper describes a novel method for single-image super-resolution (SR) based on a neighbor embedding technique which uses Semi-Nonnegative Matrix Factorization (SNMF). Each low-resolution (LR) input patch is approximated by a linear combination of nearest neighbors taken from a dictionary. This dictionary stores low-resolution and corresponding high-resolution (HR) patches taken from natural images and is thus used to infer the HR details of the super-resolved image. The entire neighbor embedding procedure is carried out in a feature space. Features which are either the gradient values of the pixels or the mean-subtracted luminance values are extracted from the LR input patches, and from the LR and HR patches stored in the dictionary. The algorithm thus searches for the K nearest neighbors of the feature vector of the LR input patch and then computes the weights for approximating the input feature vector. The use of SNMF for computing the weights of the linear approximation is shown to have a more stable behavior than the use of LLE and lead to significantly higher PSNR values for the super-resolved images.
机译:本文介绍了一种基于邻居嵌入技术的单图像超分辨率(SR)的新方法,该方法使用半负矩阵分解(SNMF)。每个低分辨率(LR)输入补丁都由从字典中获取的最近邻居的线性组合来近似。该词典存储从自然图像中获取的低分辨率和相应的高分辨率(HR)色块,因此可用于推断超分辨图像的HR细节。整个邻居嵌入过程在特征空间中执行。从LR输入小块以及存储在字典中的LR和HR小块中提取特征,既可以是像素的梯度值,也可以是减去平均后的亮度值。因此,该算法搜索LR输入补丁的特征向量的K个最近邻居,然后计算权重以近似输入特征向量。与使用LLE相比,使用SNMF计算线性逼近的权重表现出更稳定的行为,并导致超分辨图像的PSNR值明显更高。

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