Key Laboratory of Intelligent Perception and Image Understanding, Ministry of Education, Xidian University, Xi’an 710071, China.
IEEE Trans Image Process. 2012 Sep;21(9):4016-28. doi: 10.1109/TIP.2012.2201491. Epub 2012 May 25.
Recently, single image super-resolution reconstruction (SISR) via sparse coding has attracted increasing interest. In this paper, we proposed a multiple-geometric-dictionaries-based clustered sparse coding scheme for SISR. Firstly, a large number of high-resolution (HR) image patches are randomly extracted from a set of example training images and clustered into several groups of "geometric patches," from which the corresponding "geometric dictionaries" are learned to further sparsely code each local patch in a low-resolution image. A clustering aggregation is performed on the HR patches recovered by different dictionaries, followed by a subsequent patch aggregation to estimate the HR image. Considering that there are often many repetitive image structures in an image, we add a self-similarity constraint on the recovered image in patch aggregation to reveal new features and details. Finally, the HR residual image is estimated by the proposed recovery method and compensated to better preserve the subtle details of the images. Some experiments test the proposed method on natural images, and the results show that the proposed method outperforms its counterparts in both visual fidelity and numerical measures.
近年来,基于稀疏编码的单幅图像超分辨率重建(SISR)受到了越来越多的关注。本文提出了一种基于多几何字典的聚类稀疏编码方法用于 SISR。首先,从一组示例训练图像中随机提取大量高分辨率(HR)图像块,并将其聚类成几组“几何块”,从中学习相应的“几何字典”,以进一步对低分辨率图像中的每个局部块进行稀疏编码。对不同字典恢复的 HR 块进行聚类聚合,然后进行后续的块聚合以估计 HR 图像。考虑到图像中通常存在许多重复的图像结构,我们在块聚合中对恢复的图像添加自相似性约束,以揭示新的特征和细节。最后,通过所提出的恢复方法估计 HR 残差图像并进行补偿,以更好地保留图像的细微细节。一些实验在自然图像上测试了所提出的方法,结果表明,所提出的方法在视觉逼真度和数值度量方面均优于其同类方法。