The image nonlocal self-similarity (NSS) prior refers to the fact that a local patch often has many nonlocal similar patches to it across the image and has been widely applied in many recently proposed machining learning algorithms for image processing. However, there is no theoretical analysis on its working principle in the literature. In this paper, we discover a potential causality between NSS and low-rank property of color images, which is also available to grey images. A new patch group based NSS prior learning scheme is proposed to learn explicit NSS models of natural color images. The numerical low-rank property of patched matrices is also rigorously proved. The NSS-based QMC algorithm computes an optimal low-rank approximation to the high-rank color image, resulting in high PSNR and SSIM measures and particularly the better visual quality. A new tensor NSS-based QMC method is also presented to solve the color video inpainting problem based on quaternion tensor representation. The numerical experiments on large-scale color images and videos indicate the advantages of NSS-based QMC over the state-of-the-art methods.
翻译:先前的图像非本地自我相似性(NSS)是指一个事实,即一个本地补丁在图像中往往有许多非本地的类似补丁,并在最近提出的许多图像处理工艺学算法中广泛应用。然而,在文献中没有对其工作原理的理论分析。在本文中,我们发现NSS与低级别彩色图像属性之间的潜在因果关系,灰色图像也可以使用。基于NSS先前学习计划的新补丁组建议学习明确的自然彩色图像NSS模型。还严格地证明了补丁基质的低级别属性。基于NSS的QMC算法对高级别彩色图像进行了最优的低级别近似,从而产生了高PSNR和SSIM措施,特别是更好的视觉质量。还介绍了一个新的基于色调调高调的基于NSS的QMC方法来解决彩色视频涂料问题的方法。关于大规模彩色图像和视频的数值实验表明NSS基调的QMC相对于州艺术方法的优势。