Overview of The MediaEval 2022 Predicting Video Memorability Task
This work addresses the problem of predicting video memorability for researchers in multimedia and cognitive science, but it is incremental as it builds on prior editions with dataset updates and a new sub-task.
The paper describes the 5th edition of the Predicting Video Memorability Task at MediaEval 2022, which reorganizes and simplifies the task to facilitate deeper inquiry, replaces a dataset to address quality issues, and introduces an EEG-based prediction sub-task.
This paper describes the 5th edition of the 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.