基于自相似性与多任务高斯过程回归的单帧图像超分辨率重建
李键红, 吴亚榕, 吕巨建. 基于自相似性与多任务高斯过程回归的单帧图像超分辨率重建[J]. 光学 精密工程, 2018, 26(11): 2814.
LI Jian-hong, WU Ya-rong, L Ju-jian. Single image super-resolution reconstruction algorithm based on image self-similarity and multi-task Gaussian process regression[J]. Optics and Precision Engineering, 2018, 26(11): 2814.
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李键红, 吴亚榕, 吕巨建. 基于自相似性与多任务高斯过程回归的单帧图像超分辨率重建[J]. 光学 精密工程, 2018, 26(11): 2814. LI Jian-hong, WU Ya-rong, L Ju-jian. Single image super-resolution reconstruction algorithm based on image self-similarity and multi-task Gaussian process regression[J]. Optics and Precision Engineering, 2018, 26(11): 2814.