Overview of MediaEval 2020 Predicting Media Memorability Task: What Makes a Video Memorable?
De Herrera, Alba García Seco, Kiziltepe, Rukiye Savran, Chamberlain, Jon, Constantin, Mihai Gabriel, Demarty, Claire-Hélène, Doctor, Faiyaz, Ionescu, Bogdan, Smeaton, Alan F.
–arXiv.org Artificial Intelligence
This paper describes the MediaEval 2020 \textit{Predicting Media Memorability} task. After first being proposed at MediaEval 2018, the Predicting Media Memorability task is in its 3rd edition this year, as the prediction of short-term and long-term video memorability (VM) remains a challenging task. In 2020, the format remained the same as in previous editions. This year the videos are a subset of the TRECVid 2019 Video-to-Text dataset, containing more action rich video content as compared with the 2019 task. In this paper a description of some aspects of this task is provided, including its main characteristics, a description of the collection, the ground truth dataset, evaluation metrics and the requirements for participants' run submissions.
arXiv.org Artificial Intelligence
Dec-31-2020
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- Information Technology > Artificial Intelligence
- Machine Learning (1.00)
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- Information Technology > Artificial Intelligence