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Unusual Trajectory Detection

Reference Source
Publication Date:
2018
Short description:
(2018). Unusual Trajectory Detection . Retrieved from https://hdl.handle.net/10446/260650
abstract:
There has been a growing interest in unusual behavior detection in computer vision and image
processing because of its wide range of applications such as traffic surveillance, human/animal
behavior understanding, and elderly surveillance. The most traditional methods for unusual behavior
detection are trajectory based, which rely on different trajectory representations, feature extraction,
and learning methods. In this work, a comprehensive review including different trajectory represen-
tations and learning methods for unusual trajectory detection is presented. Additionally, a compar-
ative analysis using different computational methods applied to real-world datasets such as fish and
pedestrian trajectory was performed. To the best of our knowledge for the first time in this work,
active learning with feature selection is applied for unusual trajectory detection which presents
sufficiently good results even with much less training data.
Iris type:
1.2.04 Voci (in dizionario o enciclopedia) - Dictionary/Encyclopedia entries
List of contributors:
Beyan, Cigdem
Handle:
https://aisberg.unibg.it/handle/10446/260650
Book title:
Encyclopedia of Image Processing
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