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Book Chapter
Motion Primitives and Probabilistic Edit Distance for Action Recognition
Book Series
Lecture Notes in Computer Science
Publisher
Springer Berlin / Heidelberg
ISSN
0302-9743 (Print) 1611-3349 (Online)
Volume
Volume 5085/2009
Book
Gesture-Based Human-Computer Interaction and Simulation
DOI
10.1007/978-3-540-92865-2
Copyright
2009
ISBN
978-3-540-92864-5
DOI
10.1007/978-3-540-92865-2_3
Pages
24-35
Subject Collection
Computer Science
SpringerLink Date
Wednesday, January 14, 2009
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Motion Primitives and Probabilistic Edit Distance for Action Recognition
Preben Fihl
23
, Michael B. Holte
23
and Thomas B. Moeslund
23
(23)
Laboratory of Computer Vision and Media Technology, Aalborg University, Denmark
Abstract
The number of potential applications has made automatic recognition of human actions a very active research area. Different approaches have been followed based on trajectories through some state space. In this paper we also model an action as a trajectory through a state space, but we represent the actions as a sequence of temporal isolated instances, denoted primitives. These primitives are each defined by four features extracted from motion images. The primitives are recognized in each frame based on a trained classifier resulting in a sequence of primitives. From this sequence we recognize different temporal actions using a probabilistic Edit Distance method. The method is tested on different actions with and without noise and the results show recognition rates of 88.7% and 85.5%, respectively.
Thomas
B.
Moeslund
Email:
tbm@cvmt.dk
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