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An Efficient SVD-Based Method for Image Denoising

机译:一种基于SVD的高效图像去噪方法

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Nonlocal self-similarity of images has attracted considerable interest in the field of image processing and has led to several state-of-the-art image denoising algorithms, such as block matching and 3-D, principal component analysis with local pixel grouping, patch-based locally optimal wiener, and spatially adaptive iterative singular-value thresholding. In this paper, we propose a computationally simple denoising algorithm using the nonlocal self-similarity and the low-rank approximation (LRA). The proposed method consists of three basic steps. First, our method classifies similar image patches by the block-matching technique to form the similar patch groups, which results in the similar patch groups to be low rank. Next, each group of similar patches is factorized by singular value decomposition (SVD) and estimated by taking only a few largest singular values and corresponding singular vectors. Finally, an initial denoised image is generated by aggregating all processed patches. For low-rank matrices, SVD can provide the optimal energy compaction in the least square sense. The proposed method exploits the optimal energy compaction property of SVD to lead an LRA of similar patch groups. Unlike other SVD-based methods, the LRA in SVD domain avoids learning the local basis for representing image patches, which usually is computationally expensive. The experimental results demonstrate that the proposed method can effectively reduce noise and be competitive with the current state-of-the-art denoising algorithms in terms of both quantitative metrics and subjective visual quality.
机译:图像的非局部自相似性在图像处理领域引起了极大的兴趣,并导致了几种最新的图像去噪算法,例如块匹配和3-D,带有局部像素分组的主成分分析,补丁基于局部最优维纳和空间自适应迭代奇异值阈值。在本文中,我们提出了一种使用非局部自相似性和低秩近似(LRA)的计算简单的降噪算法。所提出的方法包括三个基本步骤。首先,我们的方法通过块匹配技术对相似的图像补丁进行分类,以形成相似的补丁组,从而导致相似的补丁组等级较低。接下来,通过奇异值分解(SVD)对每组相似补丁进行分解,并仅采用几个最大的奇异值和相应的奇异矢量进行估计。最后,通过汇总所有已处理的色块来生成初始去噪图像。对于低阶矩阵,SVD可以在最小二乘意义上提供最佳的能量压缩。所提出的方法利用了SVD的最佳能量压缩特性来导致相似补丁组的LRA。与其他基于SVD的方法不同,SVD域中的LRA避免了学习表示图像补丁的本地基础,这通常在计算上很昂贵。实验结果表明,该方法在量化指标和主观视觉质量方面都可以有效降低噪声,并且与当前最新的去噪算法竞争。

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