Authors
Xiaoshan Yang, Tianzhu Zhang, Changsheng Xu, Shuicheng Yan, M Shamim Hossain, Ahmed Ghoneim
Publication date
2016/6/20
Journal
IEEE Transactions on Multimedia
Volume
18
Issue
9
Pages
1832-1842
Publisher
IEEE
Description
Relative attribute (RA) learning aims to learn the ranking function describing the relative strength of the attribute. Most of current learning approaches learn a linear ranking function for each attribute by use of the hand-crafted visual features. Different from the existing study, in this paper, we propose a novel deep relative attributes (DRA) algorithm to learn visual features and the effective nonlinear ranking function to describe the RA of image pairs in a unified framework. Here, visual features and the ranking function are learned jointly, and they can benefit each other. The proposed DRA model is comprised of five convolutional neural layers, five fully connected layers, and a relative loss function which contains the contrastive constraint and the similar constraint corresponding to the ordered image pairs and the unordered image pairs, respectively. To train the DRA model effectively, we make use of the transferred …
Total citations
201620172018201920202021202220232024161111201912114
Scholar articles
X Yang, T Zhang, C Xu, S Yan, MS Hossain… - IEEE Transactions on Multimedia, 2016