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Single-image super-resolution via patch-based and group-based local smoothness modeling

机译:通过基于补丁和基于组的本地平滑度建模单图像超分辨率

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摘要

Local smoothness and nonlocal self-similarity of natural images are two main priors in the image restoration (IR) problem. Many IR methods have widely used patch-based modeling. Recently, the concept of grouping-based technique, the nonlocal patches with similar structures, has been introduced as the basic unit of sparse representation. In the group-based methods, the nonlocal self-similarity and the local sparsity properties are combined in a unified framework using the sparsity-based techniques. In this paper, a new model is proposed which utilizes both the patch and the group as the basic units of image modeling, called patch-based and group-based local smoothness modeling (PGLSM). More, precisely, in the proposed PGLSM scheme, the local smoothness in the patch-based unit is exploited by an isotropic total variation method and the local smoothness in the group-based unit is exploited by group-based sparse representation method. In this way, a novel technique for high-fidelity single-image super-resolution (SISR) via PGLSM is proposed, called SR-PGLSM. By adding nonlocal means (NLM) as the complementary regularization term to PGLSM, another technique for SISR is modeled, called SR_PGLSM_NLM. In order to efficiently solve the above variational problems, the split Bergman iterative technique has been leveraged. Extensive experimental results validate the effectiveness and robustness of the proposed methods. Our proposed schemes can recover more fine structures and achieve better results than the competing methods with the scaling factor of 2 and 3 and for noisy images both subjectively and objectively in most cases.
机译:自然图像的局部平滑度和非局部自相似性是图像恢复(IR)问题中的两个主前方。许多IR方法具有广泛使用的基于补丁的建模。最近,基于分组的技术的概念,具有相似结构的非局部斑块,被引入了稀疏表示的基本单元。在基于组的方法中,使用基于稀疏性的技术在统一的框架中组合非本地自相似性和局部稀疏性。在本文中,提出了一种利用补丁和组作为图像建模的基本单位的新模型,称为基于补丁和基于组的本地平滑度建模(PGLSM)。更确切地说,在所提出的PGLSM方案中,通过各向同性的总变化方法利用基于贴剂的单元中的局部平滑度,并通过基于组的稀疏表示方法利用基于组的单元的局部光滑度。以这种方式,提出了一种通过PGLSM的高保真单图像超分辨率(SISR)的新技术,称为SR-PGLSM。通过将非局部手段(NLM)添加为互补正则化术语,以PGLSM为SISR的另一种技术,称为SR_PGLSM_NLM。为了有效地解决上述变分问题,分裂Bergman迭代技术已经利用。广泛的实验结果验证了所提出的方法的有效性和鲁棒性。我们所提出的方案可以恢复更精细的结构,并在大多数情况下,在大多数情况下具有主观和客观的竞争方法,从竞争时间增加到更好的竞争方法。

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