Low-Rank Tensor Approximation with Laplacian Scale Mixture Modeling for Multiframe Image Denoising

W. Dong, Guangyu Li, Guangming Shi, Xin Li, Yi Ma
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引用次数: 68

Abstract

Patch-based low-rank models have shown effective in exploiting spatial redundancy of natural images especially for the application of image denoising. However, two-dimensional low-rank model can not fully exploit the spatio-temporal correlation in larger data sets such as multispectral images and 3D MRIs. In this work, we propose a novel low-rank tensor approximation framework with Laplacian Scale Mixture (LSM) modeling for multi-frame image denoising. First, similar 3D patches are grouped to form a tensor of d-order and high-order Singular Value Decomposition (HOSVD) is applied to the grouped tensor. Then the task of multiframe image denoising is formulated as a Maximum A Posterior (MAP) estimation problem with the LSM prior for tensor coefficients. Both unknown sparse coefficients and hidden LSM parameters can be efficiently estimated by the method of alternating optimization. Specifically, we have derived closed-form solutions for both subproblems. Experimental results on spectral and dynamic MRI images show that the proposed algorithm can better preserve the sharpness of important image structures and outperform several existing state-of-the-art multiframe denoising methods (e.g., BM4D and tensor dictionary learning).
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基于拉普拉斯尺度混合建模的低秩张量近似多帧图像去噪
基于patch的低秩模型在利用自然图像的空间冗余,特别是在图像去噪方面表现出了良好的效果。然而,二维低秩模型不能充分利用多光谱图像和三维mri等大型数据集的时空相关性。在这项工作中,我们提出了一种新的低秩张量近似框架与拉普拉斯尺度混合(LSM)建模多帧图像去噪。首先,将相似的三维斑块分组形成d阶张量,并对分组张量进行高阶奇异值分解(HOSVD)。然后将多帧图像去噪的任务表述为一个具有LSM先验张量系数的最大a后验估计问题。交替优化方法可以有效地估计未知稀疏系数和隐含LSM参数。具体地说,我们得到了两个子问题的闭型解。在光谱和动态MRI图像上的实验结果表明,该算法能够更好地保持重要图像结构的清晰度,并且优于现有的几种最先进的多帧去噪方法(如BM4D和张量字典学习)。
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