Improving Automatic Image Annotation Based on Word Co-occurrence

@inproceedings{Escalante2007ImprovingAI,
  title={Improving Automatic Image Annotation Based on Word Co-occurrence},
  author={Hugo Jair Escalante and Manuel Montes-y-G{\'o}mez and Luis Enrique Sucar},
  booktitle={Adaptive Multimedia Retrieval},
  year={2007}
}
Accuracy of current automatic image labeling methods is under the requirements of annotation-based image retrieval systems. The performance of most of these labeling methods is poor if we just consider the most relevant label for a given region. However, if we look within the set of the top−k candidate labels for a given region, accuracy of most of these systems is improved. In this paper we take advantage of this fact and propose a method (NBI ) based on word co-occurrences that uses the näıve… CONTINUE READING
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