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Overview of the MediaEval 2022 predicting video memorability task

Authors :
Sweeney, Lorin
Constantin, Mihai Gabriel
Demarty, Claire-Hélène
Fosco, Camilo
García Seco de Herrera, Alba
Halder, Sebastian
Healy, Graham
Ionescu, Bogdan
Matran-Fernandez, Ana
Smeaton, Alan F.
Suntana, Mushfika
Sweeney, Lorin
Constantin, Mihai Gabriel
Demarty, Claire-Hélène
Fosco, Camilo
García Seco de Herrera, Alba
Halder, Sebastian
Healy, Graham
Ionescu, Bogdan
Matran-Fernandez, Ana
Smeaton, Alan F.
Suntana, Mushfika
Publication Year :
2023

Abstract

This paper describes the 5th edition of the \textit{Predicting Video Memorability Task} as part of MediaEval2022. This year we have reorganised and simplified the task in order to lubricate a greater depth of inquiry. Similar to last year, two datasets are provided in order to facilitate generalisation, however, this year we have replaced the TRECVid2019 Video-to-Text dataset with the VideoMem dataset in order to remedy underlying data quality issues, and to prioritise short-term memorability prediction by elevating the Memento10k dataset as the primary dataset. Additionally, a fully fledged electroencephalography (EEG)-based prediction sub-task is introduced. In this paper, we outline the core facets of the task and its constituent sub-tasks; describing the datasets, evaluation metrics, and requirements for participant submissions.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1376398615
Document Type :
Electronic Resource