IEEE Trans Neural Netw Learn Syst. 2013 Oct;24(10):1648-59. doi: 10.1109/TNNLS.2013.2262001.
Example learning-based image super-resolution (SR) is recognized as an effective way to produce a high-resolution (HR) image with the help of an external training set. The effectiveness of learning-based SR methods, however, depends highly upon the consistency between the supporting training set and low-resolution (LR) images to be handled. To reduce the adverse effect brought by incompatible high-frequency details in the training set, we propose a single image SR approach by learning multiscale self-similarities from an LR image itself. The proposed SR approach is based upon an observation that small patches in natural images tend to redundantly repeat themselves many times both within the same scale and across different scales. To synthesize the missing details, we establish the HR-LR patch pairs using the initial LR input and its down-sampled version to capture the similarities across different scales and utilize the neighbor embedding algorithm to estimate the relationship between the LR and HR image pairs. To fully exploit the similarities across various scales inside the input LR image, we accumulate the previous resultant images as training examples for the subsequent reconstruction processes and adopt a gradual magnification scheme to upscale the LR input to the desired size step by step. In addition, to preserve sharper edges and suppress aliasing artifacts, we further apply the nonlocal means method to learn the similarity within the same scale and formulate a nonlocal prior regularization term to well pose SR estimation under a reconstruction-based SR framework. Experimental results demonstrate that the proposed method can produce compelling SR recovery both quantitatively and perceptually in comparison with other state-of-the-art baselines.
示例学习的图像超分辨率 (SR) 被认为是一种有效的方法,可以借助外部训练集生成高分辨率 (HR) 图像。然而,基于学习的 SR 方法的有效性高度依赖于支撑训练集与待处理的低分辨率 (LR) 图像之间的一致性。为了降低训练集中不兼容的高频细节带来的不利影响,我们提出了一种从 LR 图像本身学习多尺度自相似性的单图像 SR 方法。所提出的 SR 方法基于这样一种观察,即自然图像中的小补丁在同一尺度和不同尺度内往往会多次重复出现冗余。为了合成缺失的细节,我们使用初始 LR 输入及其下采样版本建立 HR-LR 补丁对,以捕捉不同尺度之间的相似性,并利用邻域嵌入算法估计 LR 和 HR 图像对之间的关系。为了充分利用输入 LR 图像内部的各种尺度之间的相似性,我们将之前的结果图像累积作为后续重建过程的训练示例,并采用逐步放大方案,逐步将 LR 输入放大到所需的尺寸。此外,为了保持更锐利的边缘和抑制混叠伪影,我们进一步应用非局部均值方法在同一尺度内学习相似性,并制定非局部先验正则化项,以便在基于重建的 SR 框架下很好地进行 SR 估计。实验结果表明,与其他最先进的基线相比,所提出的方法在定量和感知上都可以产生令人信服的 SR 恢复。