BibTex format
@inproceedings{Li:2019,
author = {Li, M and Dong, S and Zhang, K and Gao, Z and Wu, X and Zhang, H and Yang, G and Li, S},
title = {Deep Learning intra-image and inter-images features for Co-saliency detection},
year = {2019}
}
In this section
@inproceedings{Li:2019,
author = {Li, M and Dong, S and Zhang, K and Gao, Z and Wu, X and Zhang, H and Yang, G and Li, S},
title = {Deep Learning intra-image and inter-images features for Co-saliency detection},
year = {2019}
}
TY - CPAPER
AB - © 2018. The copyright of this document resides with its authors. It may be distributed unchanged freely in print or electronic forms. In this paper, we propose a novel deep end-to-end co-saliency detection approach to extract common salient objects from images group. The existing approaches rely heavily on manually designed metrics to characterize co-saliency. However, these methods are so subjective and not flexible enough that leads to poor generalization ability. Furthermore, most approaches separate the process of single image features and group images features extraction, which ignore the correlation between these two features that can promote the model performance. The proposed approach solves these two problems by multistage representation to extract features based on high-spatial resolution CNN. In addition, we utilize the modified CAE to explore the learnable consistency. Finally, the intra-image contrast and the inter-images consistency are fused to generate the final co-saliency maps automatically among group images by multistage learning. Experiment results demonstrate the effectiveness and superiority of our approach beyond the state-of-the-art methods.
AU - Li,M
AU - Dong,S
AU - Zhang,K
AU - Gao,Z
AU - Wu,X
AU - Zhang,H
AU - Yang,G
AU - Li,S
PY - 2019///
TI - Deep Learning intra-image and inter-images features for Co-saliency detection
ER -
For any questions related to the Centre, please contact:
Vasculitis Centre of Excellence Admin
VasculitisCoE@imperial.ac.uk