Liu Junmin, Chen Yijun, Zhang JiangShe, Xu Zongben
IEEE Trans Image Process. 2014 Sep;23(9):4022-4030. doi: 10.1109/TIP.2014.2343458. Epub 2014 Jul 25.
Recently, low-rank representation (LRR) method has achieved great success in subspace clustering (SC), which aims to cluster the data points that lie in a union of low-dimensional subspace. Given a set of data points, LRR seeks the lowest rank representation among the many possible linear combinations of the bases in a given dictionary or in terms of the data itself. However, LRR only considers the global Euclidean structure, while the local manifold structure, which is often important for many real applications, is ignored. In this paper, to exploit the local manifold structure of the data, a manifold regularization characterized by a Laplacian graph has been incorporated into LRR, leading to our proposed Laplacian regularized LRR (LapLRR). An efficient optimization procedure, which is based on alternating direction method of multipliers (ADMM), is developed for LapLRR. Experimental results on synthetic and real data sets are presented to demonstrate that the performance of LRR has been enhanced by using the manifold regularization.
最近,低秩表示(LRR)方法在子空间聚类(SC)中取得了巨大成功,子空间聚类旨在对位于低维子空间并集上的数据点进行聚类。给定一组数据点,LRR在给定字典中基的许多可能线性组合中或根据数据本身寻找最低秩表示。然而,LRR仅考虑全局欧几里得结构,而对于许多实际应用通常很重要的局部流形结构却被忽略了。在本文中,为了利用数据的局部流形结构,一种以拉普拉斯图为特征的流形正则化已被纳入LRR,从而得到了我们提出的拉普拉斯正则化LRR(LapLRR)。针对LapLRR开发了一种基于交替方向乘子法(ADMM)的高效优化过程。给出了在合成数据集和真实数据集上的实验结果,以证明使用流形正则化提高了LRR的性能。