AI and data-driven media analysis of TV content for optimised digital content marketing

Multimedia Systems(2024)

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摘要
To optimise digital content marketing for broadcasters, the Horizon 2020 funded ReTV project developed an end-to-end process termed “Trans-Vector Publishing” and made it accessible through a Web-based tool termed “Content Wizard”. This paper presents this tool with a focus on each of the innovations in data and AI-driven media analysis to address each key step in the digital content marketing workflow: topic selection, content search and video summarisation. First, we use predictive analytics over online data to identify topics the target audience will give the most attention to at a future time. Second, we use neural networks and embeddings to find the video asset closest in content to the identified topic. Third, we use a GAN to create an optimally summarised form of that video for publication, e.g. on social networks. The result is a new and innovative digital content marketing workflow which meets the needs of media organisations in this age of interactive online media where content is transient, malleable and ubiquitous.
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关键词
Digital content marketing,Topic prediction,Video retrieval,Video analysis,Video concept detection,Video summarisation
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