Robust principal component analysis via capped norms

Qian Sun, Shuo Xiang, Jieping Ye
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引用次数: 87

Abstract

In many applications such as image and video processing, the data matrix often possesses simultaneously a low-rank structure capturing the global information and a sparse component capturing the local information. How to accurately extract the low-rank and sparse components is a major challenge. Robust Principal Component Analysis (RPCA) is a general framework to extract such structures. It is well studied that under certain assumptions, convex optimization using the trace norm and l1-norm can be an effective computation surrogate of the difficult RPCA problem. However, such convex formulation is based on a strong assumption which may not hold in real-world applications, and the approximation error in these convex relaxations often cannot be neglected. In this paper, we present a novel non-convex formulation for the RPCA problem using the capped trace norm and the capped l1-norm. In addition, we present two algorithms to solve the non-convex optimization: one is based on the Difference of Convex functions (DC) framework and the other attempts to solve the sub-problems via a greedy approach. Our empirical evaluations on synthetic and real-world data show that both of the proposed algorithms achieve higher accuracy than existing convex formulations. Furthermore, between the two proposed algorithms, the greedy algorithm is more efficient than the DC programming, while they achieve comparable accuracy.
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基于上限规范的稳健主成分分析
在图像和视频处理等许多应用中,数据矩阵通常同时具有捕获全局信息的低秩结构和捕获局部信息的稀疏分量。如何准确提取低秩稀疏分量是一个重要的挑战。鲁棒主成分分析(RPCA)是提取此类结构的通用框架。在一定的假设条件下,利用迹范数和11范数的凸优化可以作为求解复杂RPCA问题的有效方法。然而,这种凸公式是建立在一个强大的假设基础上的,在实际应用中可能不成立,并且这些凸松弛的近似误差通常不能忽视。在本文中,我们利用带帽迹范数和带帽11范数给出了一个新的RPCA问题的非凸公式。此外,我们提出了两种解决非凸优化问题的算法:一种是基于凸函数差分(DC)框架,另一种是尝试通过贪心方法来解决子问题。我们对合成数据和实际数据的经验评估表明,所提出的两种算法都比现有的凸公式具有更高的精度。此外,在两种算法之间,贪心算法比直流规划算法效率更高,而两者的精度相当。
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