IEEE Trans Image Process. 2017 Nov;26(11):5094-5106. doi: 10.1109/TIP.2017.2704443. Epub 2017 May 16.
Sparsity constrained single image super-resolution (SR) has been of much recent interest. A typical approach involves sparsely representing patches in a low-resolution (LR) input image via a dictionary of example LR patches, and then using the coefficients of this representation to generate the high-resolution (HR) output via an analogous HR dictionary. However, most existing sparse representation methods for SR focus on the luminance channel information and do not capture interactions between color channels. In this paper, we extend sparsity-based SR to multiple color channels by taking the color information into account. Edge similarities amongst RGB color bands are exploited as cross channel correlation constraints. These additional constraints lead to a new optimization problem, which is not easily solvable; however, a tractable solution is proposed to solve it efficiently. Moreover, to fully exploit the complementary information among color channels, a dictionary learning method is also proposed specifically to learn color dictionaries that encourage edge similarities. Merits of the proposed method over state of the art are demonstrated both visually and quantitatively using image quality metrics.
稀疏约束单图像超分辨率 (SR) 是最近备受关注的研究领域。一种典型的方法是通过一组示例低分辨率 (LR) 补丁字典,稀疏地表示低分辨率输入图像中的补丁,然后使用该表示的系数通过类似的高分辨率 (HR) 字典生成高分辨率 (HR) 输出。然而,大多数现有的用于 SR 的稀疏表示方法侧重于亮度通道信息,而没有捕捉到颜色通道之间的相互作用。在本文中,我们通过考虑颜色信息将基于稀疏性的 SR 扩展到多个颜色通道。利用 RGB 颜色带之间的边缘相似性作为跨通道相关约束。这些额外的约束导致了一个新的优化问题,这个问题不容易解决;然而,我们提出了一种可行的解决方案来有效地解决它。此外,为了充分利用颜色通道之间的互补信息,我们还专门提出了一种字典学习方法,以学习鼓励边缘相似性的颜色字典。通过使用图像质量指标,从视觉和定量两方面证明了所提出方法相对于现有技术的优势。