Single image super-resolution via self-similarity and low-rank matrix recovery

被引:0
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作者
Hong Wang
Jianwu Li
Zhengchao Dong
机构
[1] Tianjin University,School of Mathematics
[2] Beijing Institute of Technology,Beijing Key Laboratory of Intelligent Information Technology, School of Computer Science and Technology
[3] Columbia University,Department of Psychiatry
[4] New York State Psychiatric Institute,undefined
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关键词
Single-image super-resolution; Self-similarity; Image pyramid; Low-rank matrix recovery;
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学科分类号
摘要
We propose a novel single-image super resolution (SISR) approach using self-similarity of image and the low-rank matrix recovery (LRMR). The method performs multiple upsampling steps with relatively small magnification factors to recover a desired high resolution image. Each upsampling process includes the following steps: First, a set of low/high resolution (LR/HR) patch pairs is generated from the pyramid of the input low resolution image. Next, for each patch of the unknown HR images, similar HR patches are found from the set of LR/HR patch pairs by the corresponding LR patch and are stacked into a matrix with approximately low rank. Then, the LRMR technique is exploited to estimate the unknown HR image patch. Finally, the back-projection technique is used to perform the global reconstruction. We tested the proposed method on fifteen images including humans, animals, plants, text, and medical images. Experimental results demonstrate the effectiveness of the proposed method compared with several representative methods for SISR in terms of quantitative metrics and visual effect.
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页码:15181 / 15199
页数:18
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