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Image Superresolution Reconstruction via Granular Computing Clustering

机译:通过粒度计算聚类的图像超分辨率重建

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摘要

The problem of generating a superresolution (SR) image from a single low-resolution (LR) input image is addressed via granular computing clustering in the paper. Firstly, and the training images are regarded as SR image and partitioned into some SR patches, which are resized into LS patches, the training set is composed of the SR patches and the corresponding LR patches. Secondly, the granular computing (GrC) clustering is proposed by the hypersphere representation of granule and the fuzzy inclusion measure compounded by the operation between two granules. Thirdly, the granule set (GS) including hypersphere granules with different granularities is induced by GrC and used to form the relation between the LR image and the SR image by lasso. Experimental results showed that GrC achieved the least root mean square errors between the reconstructed SR image and the original image compared with bicubic interpolation, sparse representation, and NNLasso.
机译:本文通过粒度计算聚类解决了从单个低分辨率(LR)输入图像生成超分辨率(SR)图像的问题。首先,将训练图像视为SR图像,并划分为一些SR补丁,然后将其调整为LS补丁,训练集由SR补丁和相应的LR补丁组成。其次,通过颗粒的超球表示和两个颗粒之间的运算相结合的模糊包含度量,提出了颗粒计算(GrC)聚类。第三,由GrC引入包括不同粒度的超球形颗粒的颗粒集(GS),并通过套索将其用于形成LR图像和SR图像之间的关系。实验结果表明,与双三次插值,稀疏表示和NNLasso相比,GrC在重建的SR图像和原始图像之间实现了最小的均方根误差。

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