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Adaptive Sparse Norm and Nonlocal Total Variation Methods for Image Smoothing

机译:图像稀疏的自适应稀疏范数和非局部总变分方法

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摘要

In computer vision and graphics, it is challenging to decompose various texture/structure patterns from input images. It is well recognized that how edges are defined and how this prior information guides smoothing are two keys in determining the quality of image smoothing. While many different approaches have been reported in the literature, sparse norm and nonlocal schemes are two promising tools. In this study, by integrating a texture measure as the spatially varying data-fidelity/smooth-penalty weight into the sparse norm and nonlocal total variation models, two new methods are presented for feature/structure-preserving filtering. The first one is a generalized relative total variation (i.e., GRTV) method, which improves the contrast-preserving and edge stiffness-enhancing capabilities of the RTV by extending the range of the penalty function's norm from 1 to [0, 1]. The other one is a nonlocal version of generalized RTV (i.e., NLGRTV) for which the key idea is to use a modified texture-measure as spatially varying penalty weight and to replace the local candidate pixels with the nonlocal set in the smooth-penalty term. It is shown that NLGRTV substantially improves the performance of decomposition for regions with faint pixel-boundary.
机译:在计算机视觉和图形中,从输入图像分解各种纹理/结构图案是一项挑战。众所周知,边缘的定义以及该先验信息如何指导平滑是确定图像平滑质量的两个关键。尽管文献中已经报道了许多不同的方法,但是稀疏的规范和非局部方案是两个有前途的工具。在这项研究中,通过将纹理度量作为空间变化的数据保真度/平滑惩罚权重集成到稀疏范数和非局部总变化模型中,提出了两种用于特征/结构保留的滤波方法。第一种是广义相对总方差(GRTV)方法,通过将惩罚函数范数的范围从1扩展到[0,1],提高了RTV的对比度保持和边缘刚度增强能力。另一个是广义RTV的非本地版本(即NLGRTV),其关键思想是使用修改的纹理量度作为空间变化的惩罚权重,并使用平滑惩罚项中的非本地集替换本地候选像素。 。结果表明,NLGRTV大大提高了像素边界微弱区域的分解性能。

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  • 来源
    《Mathematical Problems in Engineering》 |2014年第22期|426125.1-426125.18|共18页
  • 作者单位

    Nanchang Univ, Dept Elect Informat Engn, Nanchang 330031, Peoples R China.;

    Univ Twente, Fac Geoinformat Sci & Earth Observat ITC, NL-7500 AE Enschede, Netherlands.;

    Nanchang Univ, Dept Elect Informat Engn, Nanchang 330031, Peoples R China.;

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