SoccerNet-Depth: a Scalable Dataset for Monocular Depth Estimation in Sports Video
Leduc, Arnaud
Promotor(s) : Van Droogenbroeck, Marc ; Cioppa, Anthony
Date of defense : 24-Jun-2024/25-Jun-2024 • Permalink : http://hdl.handle.net/2268.2/20236
Details
Title : | SoccerNet-Depth: a Scalable Dataset for Monocular Depth Estimation in Sports Video |
Author : | Leduc, Arnaud |
Date of defense : | 24-Jun-2024/25-Jun-2024 |
Advisor(s) : | Van Droogenbroeck, Marc
Cioppa, Anthony |
Committee's member(s) : | Ernst, Damien
Deliège, Adrien |
Language : | English |
Discipline(s) : | Engineering, computing & technology > Computer science |
Institution(s) : | Université de Liège, Liège, Belgique |
Degree: | Master : ingénieur civil en informatique, à finalité spécialisée en "management" |
Faculty: | Master thesis of the Faculté des Sciences appliquées |
Abstract
[en] Monocular Depth Estimation (MDE) is fundamental in sports video understanding, enhancing augmented graphics, scene understanding, and game state reconstruction. Despite remarkable progress in autonomous driving and indoor scene understanding, there is currently a lack of MDE datasets tailored for sports. Furthermore, most existing datasets only focus on single images, disregarding the temporal aspect. In this work, we introduce the first video dataset for MDE in sports, SoccerNet-Depth, focusing on football and basketball videos. In particular, we leverage the graphic engine from video games to automatically extract video sequences and their associated depth maps, making our dataset easily scalable. Furthermore, we benchmark and fine-tune several state-of-the-art MDE methods on our dataset. Our analysis shows that MDE in sports is far from being solved, making our dataset a perfect playground for future research.
File(s)
Document(s)
Annexe(s)
Cite this master thesis
The University of Liège does not guarantee the scientific quality of these students' works or the accuracy of all the information they contain.