In this paper, we present the methods of approach and the main results from the Essex NLIP Team’s participation in the MediEval 2020 Predicting Media Memorability task. The task requires participants to build systems that can predict short-term and long-term memorability scores on real-world video samples provided. The focus of our approach is on the use of colour-based visual features as well as the use of the video annotation meta-data. In addition, hyper-parameter tuning was explored. Besides the simplicity of the methodology, our approach achieves competitive results. We investigated the use of different visual features. We assessed the performance of memorability scores through various regression models where Random Forest regression i...
This paper describes the MediaEval 2020 Predicting Media Memorability task. After first being propos...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
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...
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...
In this paper, we present the Predicting Media Memorability task, which is proposed as part of the M...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we present the Predicting Media Memorability tas...
The Predicting Media Memorability task in the MediaEval evaluation campaign has been running annuall...
Memorability, defined as the quality of being worth remembering, is a pressing issue in media as we ...
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 outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
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...
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...
In this paper, we present the Predicting Media Memorability task, which is proposed as part of the M...
| openaire: EC/H2020/780069/EU//MeMADIn this paper, we present the Predicting Media Memorability tas...
The Predicting Media Memorability task in the MediaEval evaluation campaign has been running annuall...
Memorability, defined as the quality of being worth remembering, is a pressing issue in media as we ...
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 outlines 6 approaches taken to computing video memorability, for the MediaEval media ...
This paper outlines 6 approaches taken to computing video memorability, for the MediaEval media ...