Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
407299 | Neurocomputing | 2016 | 9 Pages |
User provided tags, albeit play an essential role in image annotation, may inhibit accurate annotation as well since they are potentially incomplete. To address this problem, a novel tag completion method is proposed in this paper. In order to exploit as much information, the proposed method is designed with the following features: (1) Low-rank and error sparsity: the initial tag matrix D is decomposed into the complete tag matrix A and a sparse error matrix E, where A is further factorized into a basis matrix U and a sparse coefficient matrix V, i.e. , D=UV+ED=UV+E. With K⪡MK⪡M, information sharing between related tags and similar samples can be achieved via subspace construction. (2) Local reconstruction structure consistency: the local linear reconstruction structures obtained in the original feature and tag spaces are preserved in both the low-dimensional feature subspace and tag subspace. (3) Promote basis diversity: the pair-wise dot products between the columns of U are minimized, in order to obtain more representative basis vectors. Experiments conducted on Corel5K dataset and the newly issued Flickr30Concepts dataset demonstrate the effectiveness and efficiency of the proposed method.