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Focus! Relevant and Sufficient Context Selection for News Image Captioning

2022-12-01 20:00:27
Mingyang Zhou, Grace Luo, Anna Rohrbach, Zhou Yu

Abstract

News Image Captioning requires describing an image by leveraging additional context from a news article. Previous works only coarsely leverage the article to extract the necessary context, which makes it challenging for models to identify relevant events and named entities. In our paper, we first demonstrate that by combining more fine-grained context that captures the key named entities (obtained via an oracle) and the global context that summarizes the news, we can dramatically improve the model's ability to generate accurate news captions. This begs the question, how to automatically extract such key entities from an image? We propose to use the pre-trained vision and language retrieval model CLIP to localize the visually grounded entities in the news article and then capture the non-visual entities via an open relation extraction model. Our experiments demonstrate that by simply selecting a better context from the article, we can significantly improve the performance of existing models and achieve new state-of-the-art performance on multiple benchmarks.

Abstract (translated)

URL

https://arxiv.org/abs/2212.00843

PDF

https://arxiv.org/pdf/2212.00843.pdf


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