Title :
Robust Low-Rank Representation via Correntropy
Author :
Yingya Zhang ; Zhenan Sun ; Ran He ; Tieniu Tan
Author_Institution :
Center for Res. on Intell. Perception & Comput., Inst. of Autom., Beijing, China
Abstract :
Subspace clustering via Low-Rank Representation (LRR) has shown its effectiveness in clustering the data points sampled from a union of multiple subspaces. In original LRR, the noise in data is assumed to be Gaussian or sparse, which may be inappropriate in real-world scenarios, especially when the data is densely corrupted. In this paper, we aim to improve the robustness of LRR in the presence of large corruptions and outliers. First, we propose a robust LRR method by introducing the correntropy loss function. Second, a column-wise correntropy loss function is proposed to handle the sample-specific errors in data. Furthermore, an iterative algorithm based on half-quadratic optimization is developed to solve the proposed methods. Experimental results on Hopkins 155 dataset and Extended Yale Database B show that our methods can further improve the robustness of LRR and outperform other subspace clustering methods.
Keywords :
iterative methods; pattern clustering; quadratic programming; Extended Yale database B; Gaussian noise; Hopkins 155 dataset; LRR; column-wise correntropy loss function; data points clustering; half-quadratic optimization; iterative algorithm; robust low-rank representation; sparse noise; subspace clustering; Clustering algorithms; Computer vision; Dictionaries; Motion segmentation; Noise; Optimization; Robustness; Low-Rank Representation; correntropy; half-quadratic;
Conference_Titel :
Pattern Recognition (ACPR), 2013 2nd IAPR Asian Conference on
Conference_Location :
Naha
DOI :
10.1109/ACPR.2013.51