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Video Timeline Modeling For News Story Understanding

23 September 2023
Meng Liu
Ruotong Wang
Jialu Liu
H. Dai
Mingming Yang
S. Ji
Zheyun Feng
Boqing Gong
ArXiv (abs)PDFHTMLGithub (35628★)
Abstract

In this paper, we present a novel problem, namely video timeline modeling. Our objective is to create a video-associated timeline from a set of videos related to a specific topic, thereby facilitating the content and structure understanding of the story being told. This problem has significant potential in various real-world applications, for instance, news story summarization. To bootstrap research in this area, we curate a realistic benchmark dataset, YouTube-News-Timeline, consisting of over 121212k timelines and 300300300k YouTube news videos. Additionally, we propose a set of quantitative metrics to comprehensively evaluate and compare methodologies. With such a testbed, we further develop and benchmark several deep learning approaches to tackling this problem. We anticipate that this exploratory work will pave the way for further research in video timeline modeling. The assets are available via https://github.com/google-research/google-research/tree/master/video_timeline_modeling.

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