Type
ThesisAuthors
Alwassel, Humam
Advisors
Ghanem, Bernard
Committee members
Heidrich, Wolfgang
Wonka, Peter

Program
Computer ScienceDate
2018-04-17Embargo End Date
2019-04-17Permanent link to this record
http://hdl.handle.net/10754/627678
Metadata
Show full item recordAccess Restrictions
At the time of archiving, the student author of this thesis opted to temporarily restrict access to it. The full text of this thesis became available to the public after the expiration of the embargo on 2019-04-17.Abstract
State-of-the-art temporal action detectors inefficiently search the entire video for specific actions. Despite the encouraging progress these methods achieve, it is crucial to design automated approaches that only explore parts of the video which are the most relevant to the actions being searched. To address this need, we propose the new problem of action spotting in videos, which we define as finding a specific action in a video while observing a small portion of that video. Inspired by the observation that humans are extremely efficient and accurate in spotting and finding action instances in a video, we propose Action Search, a novel Recurrent Neural Network approach that mimics the way humans spot actions. Moreover, to address the absence of data recording the behavior of human annotators, we put forward the Human Searches dataset, which compiles the search sequences employed by human annotators spotting actions in the AVA and THUMOS14 datasets. We consider temporal action localization as an application of the action spotting problem. Experiments on the THUMOS14 dataset reveal that our model is not only able to explore the video efficiently (observing on average 17.3% of the video) but it also accurately finds human activities with 30.8% mAP (0.5 tIoU), outperforming state-of-the-art methodsCitation
Alwassel, H. (2018). Efficient Temporal Action Localization in Videos. KAUST Research Repository. https://doi.org/10.25781/KAUST-U2I04ae974a485f413a2113503eed53cd6c53
10.25781/KAUST-U2I04