基于仿射变换、L∗,w和L 2,1范数以及高维图像空间权矩阵的异常点和重稀疏噪声检测新鲁棒PCA:从信号处理的角度

Peidong Liang, H. T. Likassa, Chentao Zhang, Jielong Guo
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引用次数: 5

摘要

在本文中,我们提出了一种新的鲁棒的图像恢复算法,通过仿射变换,加权核,L *, w和l2,1范数。该方法考虑了考虑数据中相关样本的空间权重矩阵,解决高维图像中极值困境的l2.1范数,以及新增加的L *, w范数以减轻异常点和重稀疏噪声的潜在影响,使新方法在信号处理中对高维图像中的异常点和大变化具有更强的弹性。涉及参数的确定,并将仿射变换转化为一个凸优化问题。为了降低计算复杂度,采用交替迭代重加权乘子方向法(ADMM),推导出一组新的递归方程,以循环方式迭代更新优化变量和仿射变换。新算法在各种公共数据库上的准确性优于最先进的算法。
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New Robust PCA for Outliers and Heavy Sparse Noises' Detection via Affine Transformation, the L ∗ , w and L 2, 1 Norms, and Spatial Weight Matrix in High-Dimensional Images: From the Perspective of Signal Processing
In this paper, we propose a novel robust algorithm for image recovery via affine transformations, the weighted nuclear, L ∗ , w , and the L 2,1 norms. The new method considers the spatial weight matrix to account the correlated samples in the data, the L 2,1 norm to tackle the dilemma of extreme values in the high-dimensional images, and the L ∗ , w norm newly added to alleviate the potential effects of outliers and heavy sparse noises, enabling the new approach to be more resilient to outliers and large variations in the high-dimensional images in signal processing. The determination of the parameters is involved, and the affine transformations are cast as a convex optimization problem. To mitigate the computational complexity, alternating iteratively reweighted direction method of multipliers (ADMM) method is utilized to derive a new set of recursive equations to update the optimization variables and the affine transformations iteratively in a round-robin manner. The new algorithm is superior to the state-of-the-art works in terms of accuracy on various public databases.
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