Improved RPCA method via non-convex regularisation for image denoising

Sijie Wang, Ke-wen Xia, L. xilinx Wang, Jiangnan Zhang, Huaijin Yang
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引用次数: 18

Abstract

The traditional robust principal component analysis (RPCA) model is based on the nuclear norm, which usually underestimates the singular values of the low-rank matrix. As a consequence, the restoration image experiences serious interference by Gaussian noise, and the image quality degenerates during the denoising process. Therefore, an improved RPCA method via non-convex regularisation terms is proposed to remedy the above shortcomings. First, in order to estimate the singular value of the low-rank matrix more accurately, the authors employ the non-convex penalty function and add a weight vector to it. Then, the regularisation with non-convex penalty function and its weighted version are used to replace the nuclear norm and entry-wise l 1 norm in original RPCA, respectively, to establish an improved model. Finally, an optimal solution algorithm is derived by developing the alternating direction multiplier method. Experimental results show that the proposed method has better performance in terms of both quantitative measurement and visual perception quality than other several state-of-the-art image denoising methods.
基于非凸正则化的改进RPCA图像去噪方法
传统的鲁棒主成分分析(RPCA)模型是基于核范数的,通常会低估低秩矩阵的奇异值。因此,恢复图像受到高斯噪声的严重干扰,在去噪过程中图像质量下降。因此,提出了一种改进的非凸正则化项RPCA方法来弥补上述缺点。首先,为了更准确地估计低秩矩阵的奇异值,作者采用非凸惩罚函数并在其上添加权向量。然后,利用非凸惩罚函数正则化及其加权版本分别替换原RPCA中的核范数和入口1范数,建立改进模型。最后,通过发展交替方向乘子法,推导出一种最优解算法。实验结果表明,该方法在定量测量和视觉感知质量方面都优于其他几种先进的图像去噪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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