This paper describes our approach to the Predicting Media Memorability task in MediaEval 2021, which aims to address the question of media memorability by setting the task of automatically predicting video memorability. This year we tackle the task from a comparative standpoint, looking to gain deeper insights into each of three explored modalities, and using our results from last year's submission (2020) as a point of reference. Our best performing short-term memorability model (0.132) tested on the TRECVid2019 dataset---just like last year---was a frame based CNN that was not trained on any TRECVid data, and our best short-term memorability model (0.524) tested on the Memento10k dataset, was a Bayesian Ride Regressor fit with DenseNet121 ...
In this paper, we present the methods of approach and the main results from the Essex NLIP Team’s pa...
In this paper, we present the Predicting Media Memorability task, which is proposed as part of the M...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
This paper describes our approach to the Predicting Media Memorability task in MediaEval 2021, which...
This paper describes the MediaEval 2021 Predicting Media Memorability task, which is in its 4th edit...
This paper describes the 5th edition of the \textit{Predicting Video Memorability Task} as part of M...
This paper describes the 5th edition of the Predicting Video Memorability Task as part of MediaEval2...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
Memorability, defined as the quality of being worth remembering, is a pressing issue in media as we ...
The Predicting Media Memorability task in the MediaEval evaluation campaign has been running annuall...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we present the Predicting Media Memorability tas...
In this paper, we present the methods of approach and the main results from the Essex NLIP Team’s pa...
In this paper, we present the Predicting Media Memorability task, which is proposed as part of the M...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
This paper describes our approach to the Predicting Media Memorability task in MediaEval 2021, which...
This paper describes the MediaEval 2021 Predicting Media Memorability task, which is in its 4th edit...
This paper describes the 5th edition of the \textit{Predicting Video Memorability Task} as part of M...
This paper describes the 5th edition of the Predicting Video Memorability Task as part of MediaEval2...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
Memorability, defined as the quality of being worth remembering, is a pressing issue in media as we ...
The Predicting Media Memorability task in the MediaEval evaluation campaign has been running annuall...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we present the Predicting Media Memorability tas...
In this paper, we present the methods of approach and the main results from the Essex NLIP Team’s pa...
In this paper, we present the Predicting Media Memorability task, which is proposed as part of the M...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...