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Guiding Attention using Partial-Order Relationships for Image Captioning

2022-04-15 14:22:09
Murad Popattia, Muhammad Rafi, Rizwan Qureshi, Shah Nawaz

Abstract

The use of attention models for automated image captioning has enabled many systems to produce accurate and meaningful descriptions for images. Over the years, many novel approaches have been proposed to enhance the attention process using different feature representations. In this paper, we extend this approach by creating a guided attention network mechanism, that exploits the relationship between the visual scene and text-descriptions using spatial features from the image, high-level information from the topics, and temporal context from caption generation, which are embedded together in an ordered embedding space. A pairwise ranking objective is used for training this embedding space which allows similar images, topics and captions in the shared semantic space to maintain a partial order in the visual-semantic hierarchy and hence, helps the model to produce more visually accurate captions. The experimental results based on MSCOCO dataset shows the competitiveness of our approach, with many state-of-the-art models on various evaluation metrics.

Abstract (translated)

URL

https://arxiv.org/abs/2204.07476

PDF

https://arxiv.org/pdf/2204.07476.pdf


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