Dual Graph Regularized Latent Low-rank Representation for Subspace Clustering
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影响因子:6.79
DOI码:10.1109/TIP.2015.2472277
发表刊物:IEEE Transactions on Image Processing (TIP)
关键字:Low-rank representation, dual graph regular-ization, manifold structure, graph laplacian, image clustering.
摘要:Low-rank representation (LRR) has received considerable attention in subspace segmentation due to its effectiveness in exploring low-dimensional subspace structures embedded in data. To preserve the intrinsic geometrical structure of data, a graph regularizer has been introduced into LRR framework for learning the locality and similarity information within data. However, it is often the case that not only the high-dimensional data reside on a non-linear low-dimensional manifold in the ambient space, but also their features lie on a manifold in feature space. In this paper, we propose a dual graph regularized LRR model (DGLRR) by enforcing preservation of geometric information in both the ambient space and the feature space. The proposed method aims for simultaneously considering the geometric structures of the data manifold and the feature manifold. Furthermore, we extend the DGLRR model to include non-negative constraint, leading to a parts-based representation of data. Experiments are conducted on several image data sets to demonstrate that the proposed method outperforms the state-of-the-art approaches in image clustering.
合写作者:Junbin Gao,Zhouchen Lin,Qinfeng Shi,Yi Guo
第一作者:Ming Yin
论文类型:期刊论文
期号:2015, 24(12)
页面范围:4918-4933
是否译文:否
发表时间:2015-12-01
收录刊物:SCI