In this paper, we present a computational model capable to predict the viewer perception of car advertisements videos by using a set of low-level video descriptors. Our research goal relies on the hypothesis that these descriptors could reflect the aesthetic value of the videos and, in turn, their viewers' perception. To that effect, and as a novel approach to this problem, we automatically annotate our video corpus, downloaded from YouTube, by applying an unsupervised clustering algorithm to the retrieved metadata linked to the viewers' assessments of the videos. In this regard, a regular k-means algorithm is applied as partitioning method with k ranging from 2 to 5 clusters, modeling different satisfaction levels or classes. On the other ...
This paper addresses the automatic analysis of visual content and extraction of metadata beyond pure...
In this work, we demonstrate an automatic video annotation system which can provide users with the r...
The rapidly increasing quantity of publicly available videos has driven research into developing aut...
In this paper, we present a computational model capable to predict the viewer perception of car adve...
Proccedings of: 2nd International Workshop on Speech, Language and Audio in Multimedia. Penang, Mala...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
This research project is focused on the understanding of how saliency could influence the impression...
Content based video indexing and retrieval (CBVIR) is a lively area of research which focuses on aut...
The aesthetics of videos can be used as a useful clue to im-prove user satisfaction in many applicat...
Most of the existing video aesthetic quality assessment datasets (as seen in Table 1) are not public...
In the last decade, creating and sharing videos online has become a mainstream movement and has led ...
International audienceThe ability of multimedia data to attract and keep people's interest for longe...
International audienceDigital images and video clips are becoming popular due to the increase in the...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
Abstract—This paper presents a novel method for automati-cally classifying consumer video clips base...
This paper addresses the automatic analysis of visual content and extraction of metadata beyond pure...
In this work, we demonstrate an automatic video annotation system which can provide users with the r...
The rapidly increasing quantity of publicly available videos has driven research into developing aut...
In this paper, we present a computational model capable to predict the viewer perception of car adve...
Proccedings of: 2nd International Workshop on Speech, Language and Audio in Multimedia. Penang, Mala...
Automatic aesthetics prediction of multimedia content is bound to be a powerful tool for artificial ...
This research project is focused on the understanding of how saliency could influence the impression...
Content based video indexing and retrieval (CBVIR) is a lively area of research which focuses on aut...
The aesthetics of videos can be used as a useful clue to im-prove user satisfaction in many applicat...
Most of the existing video aesthetic quality assessment datasets (as seen in Table 1) are not public...
In the last decade, creating and sharing videos online has become a mainstream movement and has led ...
International audienceThe ability of multimedia data to attract and keep people's interest for longe...
International audienceDigital images and video clips are becoming popular due to the increase in the...
We address the problem of predicting category labels for unlabeled videos in a large video dataset b...
Abstract—This paper presents a novel method for automati-cally classifying consumer video clips base...
This paper addresses the automatic analysis of visual content and extraction of metadata beyond pure...
In this work, we demonstrate an automatic video annotation system which can provide users with the r...
The rapidly increasing quantity of publicly available videos has driven research into developing aut...