Modern techniques rely on convex relaxation to derive tractable approximations for rank-sparsity decomposition. However, the resultant precision loss usually deteriorates the performance in real-world applications. In this paper, we focus on the topic of visual saliency detection and consider the inherent uncertainty existing in observations, which may originate from both low-rank and sparse components. We formulate the rank-sparsity model with an implicit weighting factor and show that this weighting factor characterizes the nature of visual saliency. The proposed model is generalized to solve saliency and co-saliency detection in a unified way. In addition, this model can easily incorporate center-prior or other top-down priors and can extend to multi-task learning to explore the interrelation between multiple features. Experimental results demonstrate that our method improves existing rank-sparsity decomposition, and also outperforms most state of the arts on two salient object databases.
Junchi YanJian LiuYin LiZhibin NiuYuncai Liu
Rui HuangWei FengJizhou SunYaobin Zou
Wei FengYaobin ZouRui HuangJizhou Sun
Yawen XueXiaojie GuoXiaochun Cao