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VMSMO: Learning to Generate Multimodal Summary for Video-based News Articles

机译:VMSMO:学习为基于视频新闻文章生成多模式摘要

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A popular multimedia news format nowadays is providing users with a lively video and a corresponding news article, which is employed by influential news media including CNN, BBC, and social media including Twitter and Weibo. In such a case, automatically choosing a proper cover frame of the video and generating an appropriate textual summary of the article can help editors save time, and readers make the decision more effectively. Hence, in this paper, we propose the task of Video-based Multimodal Summarization with Multimodal Output (VMSMO) to tackle such a problem. The main challenge in this task is to jointly model the temporal dependency of video with semantic meaning of article. To this end, we propose a Dual-Interaction-based Multimodal Summarizer (DIMS), consisting of a dual interaction module and multimodal generator. In the dual interaction module, we propose a conditional self-attention mechanism that captures local semantic information within video and a global-attention mechanism that handles the semantic relationship between news text and video from a high level. Extensive experiments conducted on a large-scale real-world VMSMO dataset show that DIMS achieves the state-of-the-art performance in terms of both automatic metrics and human evaluations.
机译:现在,流行的多媒体新闻格式是为用户提供活跃的视频和相应的新闻文章,这些文章由包括CNN,BBC和包括Twitter和Weibo在内的社交媒体所雇用的。在这种情况下,自动选择视频的适当封面和生成文章的适当文本摘要可以帮助编辑器节省时间,读者更有效地进行决策。因此,在本文中,我们提出了通过多模式输出(VMSMO)来解决这种问题的基于视频的多模式摘要的任务。这项任务中的主要挑战是共同模拟视频的时间依赖性与文章的语义含义。为此,我们提出了一种基于双相互作用的多模式摘要器(DIMS),包括双相互作用模块和多模式发生器。在双交互模块中,我们提出了一种条件的自我关注机制,可以在视频中捕获局部语义信息和全球关注机制,该机制处理新闻文本与视频之间的语义关系,从高级处理。在大型现实世界VMSMO数据集中进行的广泛实验表明,DIMS在自动指标和人类评估方面实现了最先进的性能。

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