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Author
R. De Geest
E. Gavves
A. Ghodrati
Z. Li
C. SnoekORCID logo
T. Tuytelaars
Year
2016
host editors
B. Leibe
J. Matas
N. Sebe
M. Welling
Title
Online Action Detection
Event
14th European Conference on Computer Vision
Book/source title
Computer Vision – ECCV 2016
Book/source subtitle
14th European Conference, Amsterdam, The Netherlands, October 11-14, 2016 : proceedings
Pages (from-to)
269-284
Publisher
Cham: Springer
Volume (Publisher)
5
ISBN
9783319464534
ISBN (electronic)
9783319464541
Series
Lecture Notes in Computer Science, 0302-9743, 9909
Document type
Conference contribution
Faculty
Faculty of Science (FNWI)
Institute
Informatics Institute (IVI)
Abstract
In online action detection, the goal is to detect the start of an action in a video stream as soon as it happens. For instance, if a child is chasing a ball, an autonomous car should recognize what is going on and respond immediately. This is a very challenging problem for four reasons. First, only partial actions are observed. Second, there is a large variability in negative data. Third, the start of the action is unknown, so it is unclear over what time window the information should be integrated. Finally, in real world data, large within-class variability exists. This problem has been addressed before, but only to some extent. Our contributions to online action detection are threefold. First, we introduce a realistic dataset composed of 27 episodes from 6 popular TV series. The dataset spans over 16 h of footage annotated with 30 action classes, totaling 6,231 action instances. Second, we analyze and compare various baseline methods, showing this is a challenging problem for which none of the methods provides a good solution. Third, we analyze the change in performance when there is a variation in viewpoint, occlusion, truncation, etc. We introduce an evaluation protocol for fair comparison. The dataset, the baselines and the models will all be made publicly available to encourage (much needed) further research on online action detection on realistic data.
URL
go to publisher's site
Link
Accepted author manuscript
Language
English
Note
With online supplementary material
Persistent Identifier
https://hdl.handle.net/11245/1.547356
Downloads
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    GeestECCV2016(Accepted author manuscript)

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    978-3-319-46454-1_17(Final published version)

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    547356_suppl1(Other version)

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    547356_suppl2(Other version)

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