The explicit low-rank regularization, e.g., nuclear norm regularization, has been widely used in imaging sciences. However, it has been found that implicit regularization outperforms explicit ones in various image processing tasks. Another issue is that the fixed explicit regularization limits the applicability to broad images since different images favor different features captured by different explicit regularizations. As such, this paper proposes a new adaptive and implicit low-rank regularization that captures the low-rank prior dynamically from the training data. The core of our new adaptive and implicit low-rank regularization is parameterizing the Laplacian matrix in the Dirichlet energy-based regularization, which we call the regularization AIR. Theoretically, we show that the adaptive regularization of \ReTwo{AIR} enhances the implicit regularization and vanishes at the end of training. We validate AIR's effectiveness on various benchmark tasks, indicating that the AIR is particularly favorable for the scenarios when the missing entries are non-uniform. The code can be found at https://github.com/lizhemin15/AIR-Net.
翻译:在成像科学中广泛采用了明确的低级别正规化,例如核规范化,但发现在各种图像处理任务中,隐含的正规化优于显性。另一个问题是,固定的明显正规化限制了对广泛图像的适用性,因为不同的图像有利于不同的明确正规化所捕捉的不同特征。因此,本文件提出了一种新的适应性和隐含的低级别正规化,从培训数据中以动态方式捕捉了先前低级别的前级数据。我们新的适应性和隐含的低级别正规化的核心是Drichlet能源正规化中Laplacian矩阵的参数化,我们称之为正规化 AIR。理论上,我们表明“rerere{AIR}”的适应性正规化加强了在培训结束时的隐性正规化和消失。我们验证了AIR在各种基准任务上的有效性,表明当缺失的条目非统一时,AIR特别有利于假设情况。代码可在 https://github.com/lizem15/AIR-Net上找到。