International audienceThe ability of multimedia data to attract and keep people's interest for longer periods of time is gaining more and more importance in the fields of information retrieval and recommendation, especially in the context of the ever growing market value of social media and advertising. In this chapter we introduce a benchmarking framework (dataset and evaluation tools) designed specifically for assessing the performance of media interestingness prediction techniques. We release a dataset which consists of excerpts from 78 movie trailers of Hollywood-like movies. These data are annotated by human assessors according to their degree of interestingness. A real-world use scenario is targeted, namely interestingness is defined ...
Integrating media elements of various medium, multimedia is capable of expressing complex informatio...
This paper describes our approach for the submission to the Media-eval 2017 Predicting Media Interes...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
Volume: 1739 Host publication title: MediaEval 2016 Multimedia Benchmark Workshop Host publication s...
In this paper, we report on the creation of a publicly available, common evaluation framework for im...
International audienceIn this paper, the Predicting Media Interestingness task which is running for ...
ABSTRACT This working notes paper describes the TUD-MMC entry to the MediaEval 2016 Predicting Media...
The amount of videos available on the Web is growing explosively. While some videos are very interes...
In the context of the ever growing quantity of multimedia content from social, news and educational ...
International audienceThis paper summarizes the computational models that Technicolor proposes to pr...
We investigate human interest in photos. Based on our own and others' psychophysical experiments, we...
International audienceInterestingness has recently become an emerging concept for visual content ass...
The problem of predicting image or video interestingness from their low-level feature representation...
Experience prediction is one key component in today’s multimedia delivery. Knowing user’s viewing ex...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
Integrating media elements of various medium, multimedia is capable of expressing complex informatio...
This paper describes our approach for the submission to the Media-eval 2017 Predicting Media Interes...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
Volume: 1739 Host publication title: MediaEval 2016 Multimedia Benchmark Workshop Host publication s...
In this paper, we report on the creation of a publicly available, common evaluation framework for im...
International audienceIn this paper, the Predicting Media Interestingness task which is running for ...
ABSTRACT This working notes paper describes the TUD-MMC entry to the MediaEval 2016 Predicting Media...
The amount of videos available on the Web is growing explosively. While some videos are very interes...
In the context of the ever growing quantity of multimedia content from social, news and educational ...
International audienceThis paper summarizes the computational models that Technicolor proposes to pr...
We investigate human interest in photos. Based on our own and others' psychophysical experiments, we...
International audienceInterestingness has recently become an emerging concept for visual content ass...
The problem of predicting image or video interestingness from their low-level feature representation...
Experience prediction is one key component in today’s multimedia delivery. Knowing user’s viewing ex...
Abstract. The problem of predicting image or video interestingness from their low-level feature repr...
Integrating media elements of various medium, multimedia is capable of expressing complex informatio...
This paper describes our approach for the submission to the Media-eval 2017 Predicting Media Interes...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...