焦点!新闻图片标题的相关和充分的上下文选择

Mingyang Zhou, Grace Luo, Anna Rohrbach, Zhou Yu
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引用次数: 2

摘要

新闻图片字幕需要通过利用新闻文章中的附加上下文来描述图像。以前的工作只是粗略地利用文章来提取必要的上下文,这使得模型很难识别相关事件和命名实体。在我们的论文中,我们首先证明,通过结合捕获关键命名实体(通过oracle获得)的更细粒度上下文和总结新闻的全局上下文,我们可以显着提高模型生成准确新闻标题的能力。这就引出了一个问题,如何从图像中自动提取这些关键实体?我们建议使用预训练的视觉和语言检索模型CLIP来定位新闻文章中的视觉基础实体,然后通过开放关系提取模型捕获非视觉实体。我们的实验表明,通过简单地从文章中选择一个更好的上下文,我们可以显著提高现有模型的性能,并在多个基准测试中实现新的最先进的性能。
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Focus! Relevant and Sufficient Context Selection for News Image Captioning
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.
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