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Block Matching Local SVD Operator Based Sparsity and TV Regularization for Image Denoising

机译:基于块匹配局部SVD算子的稀疏度和电视正则化以实现图像降噪

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We propose a denoising method by integrating group sparsity and TV regularization based on self-similarity of the image blocks. By using the block matching technique, we introduce some local SVD operators to get a good sparsity representation for the groups of the image blocks. The sparsity regularization and TV are unified in a variational problem and each of the subproblems can be efficiently optimized by splitting schemes. The proposed algorithm mainly contains the following four steps: block matching, basis vectors updating, sparsity regularization and TV smoothing. The self-similarity information of the image is assembled by the block matching step. By concatenating all columns of the similar image block together, we get redundancy matrices whose column vectors are highly correlated and should have sparse coefficients after a proper transformation. In contrast with many transformation based denoising methods such as BM3D with fixed basis vectors, we update local basis vectors derived from the SVD to enforce the sparsity representation. This step is equivalent to a dictionary learning procedure. With the sparsity regularization step, one can remove the noise efficiently and keep the texture well. The TV regularization step can help us to reduced the artifacts caused by the image block stacking. Besides, we mathematically show the convergence of the algorithms when the proposed model is convex (with p=1) and the bases are fixed. This implies the iteration adopted in BM3D is converged, which was not mathematically shown in the BM3D method. Numerical experiments show that the proposed method is very competitive and outperforms state-of-the-art denoising methods such as BM3D.
机译:我们提出了一种基于图像块的自相似性将群稀疏性和电视正则化相结合的去噪方法。通过使用块匹配技术,我们引入了一些局部SVD运算符,以对图像块组获得良好的稀疏表示。稀疏正则化和TV统一在一个变分问题中,并且可以通过拆分方案有效地优化每个子问题。该算法主要包括以下四个步骤:块匹配,基向量更新,稀疏正则化和电视平滑。通过块匹配步骤来组装图像的自相似性信息。通过将相似图像块的所有列连接在一起,我们得到了冗余矩阵,这些冗余矩阵的列向量高度相关,并且经过适当转换后应该具有稀疏系数。与许多基于固定基向量的基于变换的去噪方法(例如BM3D)相比,我们更新了从SVD派生的局部基向量以执行稀疏表示。此步骤等效于字典学习过程。通过稀疏性正则化步骤,可以有效地去除噪声并保持良好的纹理。电视正则化步骤可以帮助我们减少由图像块堆叠引起的伪像。此外,当提出的模型是凸的(p = 1)且基数固定时,我们用数学方法证明了算法的收敛性。这意味着BM3D中采用的迭代已收敛,而BM3D方法中并未在数学上进行显示。数值实验表明,该方法具有很好的竞争性,并且优于最新的去噪方法(如BM3D)。

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