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Graph-guided sparse reconstruction for region tagging

Authors :
Yahong Han
Yueting Zhuang
Qi Tian
Fei Wu
Jian Shao
Source :
CVPR
Publication Year :
2012
Publisher :
IEEE, 2012.

Abstract

Many of contextual correlations co-exist within the segmented regions among images, like the visual context and semantic context. The appropriate integration and utilization of such contexts are very important to boost the performance of region tagging. Inspired by the recent advances of sparse reconstruction methods, this paper proposes an approach, called Graph-Guided Sparse Reconstruction for Region Tagging (G2SRRT). The G2SRRT consists of two steps: sparse reconstruction for testing regions and tag propagation from training regions to testing regions. In G2SRRT, graph is conducted to flexibly model the contextual correlations among regions. To integrate the graph structure learned from training regions into the sparse reconstruction, we define a Graph-Guided Fusion (G2F) penalty over the graph to encourage the sparsity of differences between two reconstruction coefficients, which corresponds to the linked regions in the graph. Guided by this G2F penalty, the highly correlated regions tend to be jointly selected for the reconstruction, which results in a better performance of region tagging. Experiments on three open benchmark image datasets demonstrate the effectiveness of the proposed algorithm.

Details

Database :
OpenAIRE
Journal :
2012 IEEE Conference on Computer Vision and Pattern Recognition
Accession number :
edsair.doi...........8f5040766cf00ff6d323f00c7ac6e673