Low-rank matrix completion (LRMC) has demonstrated remarkable success in a wide range of applications. To address the NP-hard nature of the rank minimization problem, the nuclear norm is commonly used as a convex and computationally tractable surrogate for the rank function. However, this approach often yields suboptimal solutions due to the excessive shrinkage of singular values. In this letter, we propose a novel reweighted logarithmic norm as a more effective nonconvex surrogate, which provides a closer approximation than many existing alternatives. We efficiently solve the resulting optimization problem by employing the alternating direction method of multipliers (ADMM). Experimental results on image inpainting demonstrate that the proposed method achieves superior performance compared to state-of-the-art LRMC approaches, both in terms of visual quality and quantitative metrics.
翻译:低秩矩阵补全(LRMC)已在众多应用中展现出卓越成效。为应对秩最小化问题的NP难特性,核范数通常被用作秩函数的凸且计算易处理的替代项。然而,由于奇异值的过度收缩,该方法常产生次优解。本文提出一种新颖的重加权对数范数作为更有效的非凸替代项,其相比现有多种替代方案能提供更精确的近似。我们通过采用交替方向乘子法(ADMM)高效求解所得优化问题。图像修复实验结果表明,所提方法在视觉质量与量化指标方面均优于当前最先进的LRMC方法。