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Group Behavior Recognition using Dynamic Bayesian Networks
Details
In this PhD thesis we analyze the concepts involved
in the decision making of groups of agents and apply
these concepts in creating a framework for performing
group behavior recognition. We present an overview of
the intention theory, as studied by some great
theorists such as Searle, Bratmann and Cohen, and
show the link with more recent researches. We study
the advantages and drawbacks of some techniques in
the domain and create a new model for representing
and detecting group behaviors, the aim being to
create a unified approach of the problem. Most of
this thesis is consecrated in the detailed
presentation of the model as well as the algorithm
responsible for behavior recognition. Our model is
tested on two different applications involving human
gesture analysis and multimodal fusion of audio and
video data. By means of these applications, we
advance the argument that multivariate sets of
correlated data can be efficiently analyzed under a
unified framework of behavior recognition. We show
that the correlation between different sets of data
can be modeled as cooperation inside a team and that
behavior recognition is a modern approach of
classification and pattern recognition.
Autorentext
was born in Athens in 1981. He received his Engineering degree in2004 and his PhD degree in 2007. Instead of spending most of histime in research, he is actively implied in ecology,self-construction using cob, cycling, renovative economicaltheories, strange musical instruments, martial arts and mostly,being in nature...
Klappentext
In this PhD thesis we analyze the concepts involvedin the decision making of groups of agents and applythese concepts in creating a framework for performinggroup behavior recognition. We present an overview ofthe intention theory, as studied by some greattheorists such as Searle, Bratmann and Cohen, andshow the link with more recent researches. We studythe advantages and drawbacks of some techniques inthe domain and create a new model for representingand detecting group behaviors, the aim being tocreate a unified approach of the problem. Most ofthis thesis is consecrated in the detailedpresentation of the model as well as the algorithmresponsible for behavior recognition. Our model istested on two different applications involving humangesture analysis and multimodal fusion of audio andvideo data. By means of these applications, weadvance the argument that multivariate sets ofcorrelated data can be efficiently analyzed under aunified framework of behavior recognition. We showthat the correlation between different sets of datacan be modeled as cooperation inside a team and thatbehavior recognition is a modern approach ofclassification and pattern recognition.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783639126570
- Sprache Englisch
- Größe H10mm x B220mm x T150mm
- Jahr 2009
- EAN 9783639126570
- Format Kartonierter Einband (Kt)
- ISBN 978-3-639-12657-0
- Titel Group Behavior Recognition using Dynamic Bayesian Networks
- Autor Konstantinos D. Gaitanis
- Untertitel Understanding intentions, goals and actions that take place inside teams
- Gewicht 266g
- Herausgeber VDM Verlag
- Anzahl Seiten 188
- Genre Mathematik