Nonlocal Mean Image Denoising Using Anisotropic Structure Tensor

Xi Wu, Xi Wu, Mingyuan Xie, Wei Wu, Jiliu Zhou
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引用次数: 9

Abstract

We present a novel nonlocal mean (NLM) algorithm using an anisotropic structure tensor to achieve higher accuracy of imaging denoising and better preservation of fine image details. Instead of using the intensity to identify the pixel, the proposed algorithm uses the structure tensor to characterize the boundary information around the pixel more comprehensively. Meanwhile, similarity of the structure tensor is computed in a Riemannian space for more rigorous comparison, and the similarity weight of the pixel (or patch) is determined by the intensity and structure tensor simultaneously. The proposed algorithm is compared with the original NLM algorithm and a modified NLM algorithm that is based on the principle component analysis. Quantitative and qualitative comparisons of the three NLM algorithms are presented as well.
基于各向异性结构张量的非局部均值图像去噪
提出了一种基于各向异性结构张量的非局部均值(NLM)去噪算法,以提高图像去噪的精度和更好地保留图像细节。该算法不再使用强度来识别像素,而是使用结构张量来更全面地表征像素周围的边界信息。同时,在黎曼空间中计算结构张量的相似度,进行更严格的比较,像素(或patch)的相似度权重由强度和结构张量同时确定。将该算法与原始NLM算法和基于主成分分析的改进NLM算法进行了比较。并对这三种NLM算法进行了定性和定量比较。
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