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Image denoising via bidirectional low rank representation with cluster adaptive dictionary

机译:带有簇自适应字典的双向低秩表示图像去噪

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In this study, the authors propose a new image representation model that fully exploits the similarity inherent in natural images. The idea is based on an observation of similar patches. For a clean image, when a cluster of similar patches are collected to form the similar patch matrix (SPM), there exists high correlation among columns/rows of the SPM. This implies that, when the column/row vectors are linearly expressed by a dictionary, their coefficients of columns/rows should have high correlation, which leads to the coefficient matrixes of column/row representation are low-ranked. This observation inspires them to propose a novel image denoising model named bidirectional low rank representation (BiLRR) with cluster adaptive dictionary. Specifically, they use low rank penalties simultaneously on the coefficient matrixes of column and row representations to recover the correlation structure of the SPM. Meanwhile, a cluster adaptive dictionary is learned to represent each SPM so as to well preserve the fine structure of image. By applying variable splitting and penalty technique, they present an efficient alternative minimisation algorithm to solve the proposed BiLRR model. Experimental results indicate the authors' method achieves a competitive denoising performance in comparison with state-of-the-art algorithms in terms of subjective and objective qualities.
机译:在这项研究中,作者提出了一种新的图像表示模型,该模型充分利用了自然图像中固有的相似性。这个想法是基于对类似补丁的观察。对于干净的图像,当收集相似补丁的簇以形成相似补丁矩阵(SPM)时,SPM的列/行之间存在高度相关性。这意味着,当用字典线性地表示列/行向量时,它们的列/行系数应具有较高的相关性,这导致列/行表示的系数矩阵排名较低。这一发现启发他们提出了一种新颖的图像降噪模型,该模型称为带有群集自适应词典的双向低秩表示(BiLRR)。具体而言,他们在列和行表示的系数矩阵上同时使用低秩惩罚,以恢复SPM的相关结构。同时,学习簇自适应词典来表示每个SPM,以便很好地保留图像的精细结构。通过应用变量分割和惩罚技术,他们提出了一种有效的替代最小化算法来解决所提出的BiLRR模型。实验结果表明,在主观和客观质量方面,与最先进的算法相比,作者的方法具有出色的去噪性能。

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