Personalized Cinemagraphs using Semantic Understanding and Collaborative Learning
Abstract
Cinemagraphs are a compelling way to convey dynamic aspects of a scene. In these media, dynamic and still elements are juxtaposed to create an artistic and narrative experience. Creating a high-quality, aesthetically pleasing cinemagraph requires isolating objects in a semantically meaningful way and then selecting good start times and looping periods for those objects to minimize visual artifacts (such a tearing). To achieve this, we present a new technique that uses object recognition and semantic segmentation as part of an optimization method to automatically create cinemagraphs from videos that are both visually appealing and semantically meaningful. Given a scene with multiple objects, there are many cinemagraphs one could create. Our method evaluates these multiple candidates and presents the best one, as determined by a model trained to predict human preferences in a collaborative way. We demonstrate the effectiveness of our approach with multiple results and a user study.
Cite
@article{arxiv.1708.02970,
title = {Personalized Cinemagraphs using Semantic Understanding and Collaborative Learning},
author = {Tae-Hyun Oh and Kyungdon Joo and Neel Joshi and Baoyuan Wang and In So Kweon and Sing Bing Kang},
journal= {arXiv preprint arXiv:1708.02970},
year = {2017}
}
Comments
To appear in ICCV 2017. Total 17 pages including the supplementary material