Key Laboratory of Intelligent Perception and Image Understanding of Education, School of Electronic Engineering, Xidian University, Xi’an 710071, China.
IEEE Trans Image Process. 2013 Apr;22(4):1382-94. doi: 10.1109/TIP.2012.2231086. Epub 2013 Jan 9.
Sparse representation is proven to be a promising approach to image super-resolution, where the low-resolution (LR) image is usually modeled as the down-sampled version of its high-resolution (HR) counterpart after blurring. When the blurring kernel is the Dirac delta function, i.e., the LR image is directly down-sampled from its HR counterpart without blurring, the super-resolution problem becomes an image interpolation problem. In such cases, however, the conventional sparse representation models (SRM) become less effective, because the data fidelity term fails to constrain the image local structures. In natural images, fortunately, many nonlocal similar patches to a given patch could provide nonlocal constraint to the local structure. In this paper, we incorporate the image nonlocal self-similarity into SRM for image interpolation. More specifically, a nonlocal autoregressive model (NARM) is proposed and taken as the data fidelity term in SRM. We show that the NARM-induced sampling matrix is less coherent with the representation dictionary, and consequently makes SRM more effective for image interpolation. Our extensive experimental results demonstrate that the proposed NARM-based image interpolation method can effectively reconstruct the edge structures and suppress the jaggy/ringing artifacts, achieving the best image interpolation results so far in terms of PSNR as well as perceptual quality metrics such as SSIM and FSIM.
稀疏表示被证明是一种很有前途的图像超分辨率方法,其中低分辨率(LR)图像通常被建模为其高分辨率(HR)对应物经过模糊后的下采样版本。当模糊核为狄拉克δ函数时,即 LR 图像是直接从其 HR 对应物下采样而没有模糊,那么超分辨率问题就变成了图像插值问题。然而,在这种情况下,传统的稀疏表示模型(SRM)变得不那么有效,因为数据保真度项无法约束图像的局部结构。在自然图像中,幸运的是,许多与给定块相似的非局部块可以为局部结构提供非局部约束。在本文中,我们将图像的非局部自相似性纳入到用于图像插值的 SRM 中。更具体地说,提出了一种非局部自回归模型(NARM),并将其作为 SRM 中的数据保真度项。我们表明,NARM 诱导的采样矩阵与表示字典的相关性较低,因此使 SRM 更有效地用于图像插值。我们广泛的实验结果表明,所提出的基于 NARM 的图像插值方法可以有效地重建边缘结构并抑制锯齿/振铃伪影,在 PSNR 以及 SSIM 和 FSIM 等感知质量指标方面实现了迄今为止最好的图像插值结果。