neighbor_voting_idea

The forthcoming IEEE Transactions on Multimedia paper by Xirong Li, Cees Snoek, and Marcel Worring, entitled “Learning Social Tag Relevance by Neighbor Voting” is available online now. Social image analysis and retrieval is important for helping people organize and access the increasing amount of user-tagged multimedia. Since user tagging is known to be uncontrolled, ambiguous, and overly personalized, a fundamental problem is how to interpret the relevance of a user-contributed tag with respect to the visual content the tag is describing. Intuitively, if different persons label visually similar images using the same tags, these tags are likely to reflect objective aspects of the visual content. Starting from this intuition, we propose in this paper a neighbor voting algorithm which accurately and efficiently learns tag relevance by accumulating votes from visual neighbors. Under a set of well defined and realistic assumptions, we prove that our algorithm is a good tag relevance measurement for both image ranking and tag ranking. Three experiments on 3.5 million Flickr photos demonstrate the general applicability of our algorithm in both social image retrieval and image tag suggestion. Our tag relevance learning algorithm substantially improves upon baselines for all the experiments. The results suggest that the proposed algorithm is promising for real-world applications.


This week I learned that my PhD thesis, entitled “The Authoring Metaphor to Machine Understanding of Multimedia“, is still actively used for research purposes, but certainly not in the way it was intended ;)  My office-mate Sander found a useful application of the research, see the picture on the right.

For those of you interested in a hard copy version of the booklet, I still have a few more left, just drop me an email. More visual evidence showcasing useful applications that build upon the research is welcome.

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Today I gave a talk at our neighbor’s institute: CWI, the national research center for mathematics and computer science in the Netherlands. It was my first talk on a new topic, coined for the moment as socio-video search, where we aim to connect machine-based multimedia tagging, with user-tagging of multimedia. Highlighting, in particular, recent papers by Arjan Setz, Xirong Li, Daragh Byrne, and Aiden Doherty. I would like to thank the CWI-colleague researchers for having me, and also for the lively discussion on the content, which I take as a positive sign. For those who are interested, the slides are available here. More comments welcome!