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Image denoising via sparse representation using rotational dictionary

机译:使用旋转字典通过稀疏表示对图像进行去噪

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In this paper, an image denoising algorithm is proposed using a rotational dictionary learned from image patches. Since the traditional dictionary-learning-based methods seldom take into account the rotational invariance for the dictionary, an improved K-means singular value decomposition (K-SVD) algorithm is developed with the rotation of atoms. In our method, the rotational version of atoms is introduced to greedily match the noisy image in sparse coding procedure. On the other hand, in dictionary learning procedure, to maximize the diversity of atoms, a rotational operation on residual error is adopted such that the rotational correlation among atoms is removed. As the novel strategy exploits the rotational invariance of atoms, more intrinsic features existing among image patches can be effectively extracted. Experiments also illustrate that the proposed method can achieve better performance than some other well-developed denoising methods.
机译:在本文中,使用从图像斑块中学到的旋转字典提出了一种图像去噪算法。由于传统的基于字典 - 基于学习的方法很少考虑到字典的旋转不变性,因此通过原子的旋转开发了改进的K-均值奇异值分解(K-SVD)算法。在我们的方法中,引入了旋转版本的原子以贪婪地匹配稀疏编码过程中的噪声图像。另一方面,在字典学习过程中,为了最大化原子的分集,采用了残余误差的旋转操作,使得原子之间的旋转相关性被移除。由于新颖的策略利用原子的旋转不变性,可以有效地提取图像斑块中存在的更多内在特征。实验还说明所提出的方法可以实现比其他一些良好的去噪方法更好的性能。

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