Tag relevance fusion for social image retrieval

@article{Li2014TagRF,
  title={Tag relevance fusion for social image retrieval},
  author={Xirong Li},
  journal={Multimedia Systems},
  year={2014},
  volume={23},
  pages={29-40}
}
Due to the subjective nature of social tagging, measuring the relevance of social tags with respect to the visual content is crucial for retrieving the increasing amounts of social-networked images. Witnessing the limit of a single measurement of tag relevance, we introduce in this paper tag relevance fusion as an extension to methods for tag relevance estimation. We present a systematic study, covering tag relevance fusion in early and late stages, and in supervised and unsupervised settings… CONTINUE READING
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