Fan Jicong, Chow Tommy W S
Department of Electronic Engineering, City University of Hong Kong, Tat Chee Avenue, Kowloon, Hong Kong Special Administrative Region.
Neural Netw. 2017 Sep;93:36-44. doi: 10.1016/j.neunet.2017.04.005. Epub 2017 Apr 25.
Many methods have recently been proposed for subspace clustering, but they are often unable to handle incomplete data because of missing entries. Using matrix completion methods to recover missing entries is a common way to solve the problem. Conventional matrix completion methods require that the matrix should be of low-rank intrinsically, but most matrices are of high-rank or even full-rank in practice, especially when the number of subspaces is large. In this paper, a new method called Sparse Representation with Missing Entries and Matrix Completion is proposed to solve the problems of incomplete-data subspace clustering and high-rank matrix completion. The proposed algorithm alternately computes the matrix of sparse representation coefficients and recovers the missing entries of a data matrix. The proposed algorithm recovers missing entries through minimizing the representation coefficients, representation errors, and matrix rank. Thorough experimental study and comparative analysis based on synthetic data and natural images were conducted. The presented results demonstrate that the proposed algorithm is more effective in subspace clustering and matrix completion compared with other existing methods.
最近已经提出了许多用于子空间聚类的方法,但由于存在缺失项,它们往往无法处理不完整的数据。使用矩阵补全方法来恢复缺失项是解决该问题的常用方法。传统的矩阵补全方法要求矩阵本质上应具有低秩,但实际上大多数矩阵是高秩甚至满秩的,尤其是当子空间数量很大时。本文提出了一种名为“带缺失项的稀疏表示与矩阵补全”的新方法,以解决不完整数据子空间聚类和高秩矩阵补全的问题。所提出的算法交替计算稀疏表示系数矩阵并恢复数据矩阵的缺失项。该算法通过最小化表示系数、表示误差和矩阵秩来恢复缺失项。基于合成数据和自然图像进行了全面的实验研究和对比分析。给出的结果表明,与其他现有方法相比,所提出的算法在子空间聚类和矩阵补全方面更有效。