Measuring and Predicting Tag Importance for Image Retrieval

28 Feb 2016Shangwen LiSanjay PurushothamChen ChenYuzhuo RenC. -C. Jay Kuo

Textual data such as tags, sentence descriptions are combined with visual cues to reduce the semantic gap for image retrieval applications in today's Multimodal Image Retrieval (MIR) systems. However, all tags are treated as equally important in these systems, which may result in misalignment between visual and textual modalities during MIR training... (read more)

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