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Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis

Authors :
Roberta Ferrario
Céline Hudelot
Davide Conigliaro
Daniele Porello
Department of Computer Science [Verona] (UNIVR | DI)
University of Verona (UNIVR)
Laboratory for Applied Ontology (LOA)
Istituto di Scienze e Tecnologie della Cognizione [Trento] (ISTC-CNR)
Mathématiques et Informatique pour la Complexité et les Systèmes (MICS)
CentraleSupélec
Source :
Group and Crowd Behavior for Computer Vision, edited by Murino, V., Cristani, M., Shah S., Savarese, S., pp. 297–319. Amsterdam: Elsevier ScienceDirec, 2017, info:cnr-pdr/source/autori:Davide Conigliaro, Roberta Ferrario, Céline Hudelot, Daniele Porello/titolo:Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis/titolo_volume:Group and Crowd Behavior for Computer Vision/curatori_volume:Murino, V., Cristani, M., Shah S., Savarese, S./editore: /anno:2017, Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis, Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis, Elsevier Inc., pp.297-319, 2017, 9780128092804; 9780128092767. ⟨10.1016/B978-0-12-809276-7.00016-3⟩, Group and Crowd Behavior for Computer Vision
Publication Year :
2017
Publisher :
ELSEVIER, 2017.

Abstract

International audience; Capturing and understanding crowd dynamics is an important issue under diverse perspectives. From social, psychological, and political sciences to safety management, studying, modeling, and predicting the presence, behavior, and dynamics of crowds, possibly preventing dangerous activities, is absolutely crucial. In the literature, crowds have been classified under different categories depending on their size and focus of attention. This chapter focuses on spectator crowds, namely crowds formed by people whose behavior is constrained by a structured environment, whose focus of attention is mainly shared, directed to a specific event. We first propose the backbone of an ontology of spectator crowd behavior based on a foundational analysis of both related literature and S-Hock, a massive annotated video dataset on crowd behavior during hockey events. Then, we present a new methodological approach integrating ontological reasoning, performed with a new description logic-based temporal formalism, with computer vision algorithms, allowing for automatic recognition of events happening in the playground, based on the behavior of the crowd in the stands. © 2017 Elsevier Inc. All rights reserved.

Details

Language :
English
ISBN :
978-0-12-809280-4
978-0-12-809276-7
ISBNs :
9780128092804 and 9780128092767
Database :
OpenAIRE
Journal :
Group and Crowd Behavior for Computer Vision, edited by Murino, V., Cristani, M., Shah S., Savarese, S., pp. 297–319. Amsterdam: Elsevier ScienceDirec, 2017, info:cnr-pdr/source/autori:Davide Conigliaro, Roberta Ferrario, Céline Hudelot, Daniele Porello/titolo:Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis/titolo_volume:Group and Crowd Behavior for Computer Vision/curatori_volume:Murino, V., Cristani, M., Shah S., Savarese, S./editore: /anno:2017, Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis, Integrating Computer Vision Algorithms and Ontologies for Spectator Crowd Behavior Analysis, Elsevier Inc., pp.297-319, 2017, 9780128092804; 9780128092767. ⟨10.1016/B978-0-12-809276-7.00016-3⟩, Group and Crowd Behavior for Computer Vision
Accession number :
edsair.doi.dedup.....f95d9a0da6d9858b6f1caec85d96db70