IEEE Trans Image Process. 2017 Feb;26(2):994-1003. doi: 10.1109/TIP.2016.2639440. Epub 2016 Dec 14.
Motivated by the fact that image patches could be inherently represented by matrices, single-image super-resolution is treated as a problem of learning regression operators in a matrix space in this paper. The regression operators that map low-resolution image patches to high-resolution image patches are generally defined by the left and right multiplication operators. The pairwise operators are, respectively, used to extract the raw and column information of low-resolution image patches for recovering high-resolution estimations. The patch-based regression algorithm possesses three favorable properties. First, the proposed super-resolution algorithm is efficient during both training and testing, because image patches are treated as matrices. Second, the data storage requirement of the optimal pairwise operator is far less than most popular single-image super-resolution algorithms, because only two small sized matrices need to be stored. Last, the super-resolution performance is competitive with most popular single-image super-resolution algorithms, because both raw and column information of image patches is considered. Experimental results show the efficiency and effectiveness of the proposed patch-based single-image super-resolution algorithm.
鉴于图像块可以由矩阵固有地表示,本文将单图像超分辨率视为在矩阵空间中学习回归算子的问题。将低分辨率图像块映射到高分辨率图像块的回归算子通常由左右乘法算子定义。成对算子分别用于提取低分辨率图像块的行和列信息以恢复高分辨率估计。基于块的回归算法具有三个良好特性。首先,所提出的超分辨率算法在训练和测试期间都很高效,因为图像块被视为矩阵。其次,最优成对算子的数据存储需求远小于大多数流行的单图像超分辨率算法,因为只需要存储两个小尺寸矩阵。最后,超分辨率性能与大多数流行的单图像超分辨率算法具有竞争力,因为考虑了图像块的行和列信息。实验结果表明了所提出的基于块的单图像超分辨率算法的效率和有效性。