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Boosting Entity-aware Image Captioning with Multi-modal Knowledge Graph (2107.11970v1)

Published 26 Jul 2021 in cs.CV

Abstract: Entity-aware image captioning aims to describe named entities and events related to the image by utilizing the background knowledge in the associated article. This task remains challenging as it is difficult to learn the association between named entities and visual cues due to the long-tail distribution of named entities. Furthermore, the complexity of the article brings difficulty in extracting fine-grained relationships between entities to generate informative event descriptions about the image. To tackle these challenges, we propose a novel approach that constructs a multi-modal knowledge graph to associate the visual objects with named entities and capture the relationship between entities simultaneously with the help of external knowledge collected from the web. Specifically, we build a text sub-graph by extracting named entities and their relationships from the article, and build an image sub-graph by detecting the objects in the image. To connect these two sub-graphs, we propose a cross-modal entity matching module trained using a knowledge base that contains Wikipedia entries and the corresponding images. Finally, the multi-modal knowledge graph is integrated into the captioning model via a graph attention mechanism. Extensive experiments on both GoodNews and NYTimes800k datasets demonstrate the effectiveness of our method.

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Authors (5)
  1. Wentian Zhao (14 papers)
  2. Yao Hu (106 papers)
  3. Heda Wang (12 papers)
  4. Xinxiao Wu (21 papers)
  5. Jiebo Luo (355 papers)
Citations (36)