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图拉普拉斯正则化在图像去噪中的应用:连续域分析。

Graph Laplacian Regularization for Image Denoising: Analysis in the Continuous Domain.

出版信息

IEEE Trans Image Process. 2017 Apr;26(4):1770-1785. doi: 10.1109/TIP.2017.2651400. Epub 2017 Jan 11.

DOI:10.1109/TIP.2017.2651400
PMID:28092554
Abstract

Inverse imaging problems are inherently underdetermined, and hence, it is important to employ appropriate image priors for regularization. One recent popular prior-the graph Laplacian regularizer-assumes that the target pixel patch is smooth with respect to an appropriately chosen graph. However, the mechanisms and implications of imposing the graph Laplacian regularizer on the original inverse problem are not well understood. To address this problem, in this paper, we interpret neighborhood graphs of pixel patches as discrete counterparts of Riemannian manifolds and perform analysis in the continuous domain, providing insights into several fundamental aspects of graph Laplacian regularization for image denoising. Specifically, we first show the convergence of the graph Laplacian regularizer to a continuous-domain functional, integrating a norm measured in a locally adaptive metric space. Focusing on image denoising, we derive an optimal metric space assuming non-local self-similarity of pixel patches, leading to an optimal graph Laplacian regularizer for denoising in the discrete domain. We then interpret graph Laplacian regularization as an anisotropic diffusion scheme to explain its behavior during iterations, e.g., its tendency to promote piecewise smooth signals under certain settings. To verify our analysis, an iterative image denoising algorithm is developed. Experimental results show that our algorithm performs competitively with state-of-the-art denoising methods, such as BM3D for natural images, and outperforms them significantly for piecewise smooth images.

摘要

逆像问题本质上是欠定的,因此,采用适当的图像先验正则化是很重要的。最近一种流行的先验方法——图拉普拉斯正则化器——假设目标像素块相对于适当选择的图是平滑的。然而,将图拉普拉斯正则化器施加到原始逆问题上的机制和影响还没有被很好地理解。为了解决这个问题,在本文中,我们将像素块的邻域图解释为黎曼流形的离散对应物,并在连续域中进行分析,深入了解图拉普拉斯正则化在图像去噪中的几个基本方面。具体来说,我们首先证明了图拉普拉斯正则化器收敛到一个连续域的泛函,该泛函集成了在局部自适应度量空间中测量的范数。专注于图像去噪,我们推导了一个最优的度量空间,假设像素块的非局部自相似性,从而得到离散域中最优的图拉普拉斯正则化器。然后,我们将图拉普拉斯正则化解释为各向异性扩散方案,以解释其在迭代过程中的行为,例如,在某些设置下,它倾向于促进分段平滑信号。为了验证我们的分析,我们开发了一种迭代图像去噪算法。实验结果表明,我们的算法在自然图像的 BM3D 等最先进的去噪方法上具有竞争力,并且在分段平滑图像上表现明显优于它们。

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