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Beyond low rank + sparse: Multi-scale low rank matrix decomposition

机译:超越低秩+稀疏:多尺度低秩矩阵分解

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The recent low rank + sparse matrix decomposition [1,2] enables us to decompose a matrix into sparse and globally low rank components. In this paper, we present a natural generalization and consider the decomposition of matrices into low rank components of multiple scales. The proposed multi-scale low rank decomposition is well motivated in practice, since natural data often exhibit multi-scale structure instead of globally or sparsely. Concretely, we propose a multi-scale low rank modeling to represent a data matrix as a sum of block-wise low rank matrices with increasing scales of block sizes. We then consider the inverse problem of decomposing the data matrix into its multi-scale low rank components, and approach the problem via a convex formulation. Theoretically, we show that under a deterministic incoherence condition, the convex program recovers the multi-scale low rank components exactly. Empirically, we show that the multi-scale low rank decomposition provides a more intuitive decomposition than existing low rank methods, and demonstrate its effectiveness in four applications, including illumination normalization for face images, motion separation for surveillance videos, multi-scale modeling of the dynamic contrast enhanced magnetic resonance imaging and collaborative filtering with age information.
机译:最近的低秩+稀疏矩阵分解[1,2]使我们能够将矩阵分解为稀疏和全局低秩分量。在本文中,我们提出了自然归纳法,并考虑了将矩阵分解为多个尺度的低秩分量。提议的多尺度低秩分解在实践中很容易动手,因为自然数据通常表现出多尺度结构,而不是全局或稀疏。具体地,我们提出了多尺度低秩建模,以将数据矩阵表示为随着块尺寸的尺度增加的逐块低秩矩阵的总和。然后,我们考虑将数据矩阵分解为多尺度低秩分量的反问题,并通过凸公式解决该问题。从理论上讲,我们表明在确定性非相干条件下,凸程序可以准确地恢复多尺度低秩分量。根据经验,我们显示多尺度低秩分解比现有的低秩方法提供了更直观的分解,并展示了其在四个应用中的有效性,包括面部图像的照明归一化,监视视频的运动分离,图像的多尺度建模。动态对比增强了磁共振成像,并通过年龄信息进行了协同过滤。

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