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Paying Attention to Descriptions Generated by Image Captioning Models (1704.07434v3)

Published 24 Apr 2017 in cs.CV and cs.AI

Abstract: To bridge the gap between humans and machines in image understanding and describing, we need further insight into how people describe a perceived scene. In this paper, we study the agreement between bottom-up saliency-based visual attention and object referrals in scene description constructs. We investigate the properties of human-written descriptions and machine-generated ones. We then propose a saliency-boosted image captioning model in order to investigate benefits from low-level cues in LLMs. We learn that (1) humans mention more salient objects earlier than less salient ones in their descriptions, (2) the better a captioning model performs, the better attention agreement it has with human descriptions, (3) the proposed saliency-boosted model, compared to its baseline form, does not improve significantly on the MS COCO database, indicating explicit bottom-up boosting does not help when the task is well learnt and tuned on a data, (4) a better generalization is, however, observed for the saliency-boosted model on unseen data.

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Authors (4)
  1. Hamed R. Tavakoli (22 papers)
  2. Rakshith Shetty (9 papers)
  3. Ali Borji (89 papers)
  4. Jorma Laaksonen (37 papers)
Citations (72)