In this paper, we report on the creation of a publicly available, common evaluation framework for image and video visual interestingness prediction. We propose a robust data set, the Interestingness10k, with 9831 images and more than 4 h of video, interestigness scores determined based on more than 1M pair-wise annotations of 800 trusted annotators, some pre-computed multi-modal descriptors, and 192 system output results as baselines. The data were validated extensively during the 2016–2017 MediaEval benchmark campaigns. We provide an in-depth analysis of the crucial components of visual interestingness prediction algorithms by reviewing the capabilities and the evolution of the MediaEval benchmark systems, as well as of prominent systems f...
We investigate human interest in photos. Based on our own and others ’ psychological experiments, we...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
ABSTRACT This paper describes the system developed by team MLP-BOON for MediaEval 2016 Predicting Me...
International audienceThe ability of multimedia data to attract and keep people's interest for longe...
In the context of the ever growing quantity of multimedia content from social, news and educational ...
Volume: 1739 Host publication title: MediaEval 2016 Multimedia Benchmark Workshop Host publication s...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
We investigate human interest in photos. Based on our own and others' psychophysical experiments, we...
International audienceIn this paper, the Predicting Media Interestingness task which is running for ...
International audienceThis paper summarizes the computational models that Technicolor proposes to pr...
ABSTRACT This working notes paper describes the TUD-MMC entry to the MediaEval 2016 Predicting Media...
This paper describes our approach for the submission to the Media-eval 2017 Predicting Media Interes...
The amount of videos available on the Web is growing explosively. While some videos are very interes...
International audienceInterestingness has recently become an emerging concept for visual content ass...
We investigate human interest in photos. Based on our own and others ’ psychological experiments, we...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
ABSTRACT This paper describes the system developed by team MLP-BOON for MediaEval 2016 Predicting Me...
International audienceThe ability of multimedia data to attract and keep people's interest for longe...
In the context of the ever growing quantity of multimedia content from social, news and educational ...
Volume: 1739 Host publication title: MediaEval 2016 Multimedia Benchmark Workshop Host publication s...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
We investigate human interest in photos. Based on our own and others' psychophysical experiments, we...
International audienceIn this paper, the Predicting Media Interestingness task which is running for ...
International audienceThis paper summarizes the computational models that Technicolor proposes to pr...
ABSTRACT This working notes paper describes the TUD-MMC entry to the MediaEval 2016 Predicting Media...
This paper describes our approach for the submission to the Media-eval 2017 Predicting Media Interes...
The amount of videos available on the Web is growing explosively. While some videos are very interes...
International audienceInterestingness has recently become an emerging concept for visual content ass...
We investigate human interest in photos. Based on our own and others ’ psychological experiments, we...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
ABSTRACT This paper describes the system developed by team MLP-BOON for MediaEval 2016 Predicting Me...