Web Image Clustering by Consistent Utilization of Visual Features and Surrounding Texts
- Bin Gao ,
- Tie-Yan Liu ,
- Xin Zheng ,
- Qian-Sheng Cheng ,
- Wei-Ying Ma ,
- Tao Qin
Proceedings of the 13th annual ACM international conference on Multimedia |
Published by Association for Computing Machinery, Inc.
Image clustering, an important technology for image processing, has been actively researched for a long period of time. Especially in recent years, with the explosive growth of the Web, image clustering has even been a critical technology to help users digest the large amount of online visual information. However, as far as we know, many previous works on image clustering only used either low-level visual features or surrounding texts, but rarely exploited these two kinds of information in the same framework. To tackle this problem, we proposed a novel method named consistent bipartite graph co-partitioning in this paper, which can cluster Web images based on the consistent fusion of the information contained in both low-level features and surrounding texts. In particular, we formulated it as a constrained multi-objective optimization problem, which can be efficiently solved by semi-definite programming (SDP). Experiments on a real-world Web image collection showed that our proposed method outperformed the methods only based on low-level features or surround texts.
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