Table 5: Position and direction detection.
Frame Alert Object Estate Objective
437 Pre-
Alarm
1 Initial Cashpoint
443 Alarm 1 Goings
towards the
cashpoint
Cashpoint
563 Alarm 1 Close to the
cashpoint
Cashpoint
serving accuracy enough to perform inferences about
objects trajectories. Global behavior patterns are rep-
resented through state machines which vertices repre-
sent a possible state in the scene.
To finish with our tests, the table 5 shows an ex-
tract of the results for position and direction analysis.
The sequence used was “Browse2”.
5 CONCLUSIONS
This article has introduced an intelligent surveillance
system by integration of segmentation, tracking and
activities detection algorithms. The system is able
to detect behaviors and report information to the user
thanks to attractive and functional interface. As a fu-
ture work it is planned to add new sensors types for
surveillance and works with a distributive architec-
ture.
ACKNOWLEDGEMENTS
This work was partially supported by Spanish Min-
isterio de Ciencia e Innovaci´on TIN2010-20845-C03-
01 grant, and by Junta de Comunidades de Castilla-La
Mancha PII2I09-0069-0994 and PEII09-0054-9581
grants.
REFERENCES
Ayers, D. and Shah, M. (2001). Monitoring human behavior
from video taken in an office environment. Image and
Vision Computing, 19(12):833–846.
Davis, J. and Sharma, V. (2007). Background-subtraction in
thermal imagery using contour saliency. International
Journal of Computer Vision, 71:161–181.
Delgado, A., L´opez, M., and Fern´andez-Caballero, A.
(2010). Real-time motion detection by lateral inhi-
bition in accumulative computation. Engineering Ap-
plications of Artificial Intelligence, 23:129–139.
Fern´andez-Caballero, A., Castillo, J., Mart´ınez-Cantos, J.,
and Mart´ınez-Tom´as, R. (2010). Optical flow or image
subtraction in human detection from infrared camera
on mobile robot. Robotics and Autonomous Systems,
58:1273–1281.
Fern´andez-Caballero, A., Castillo, J., Serrano-Cuerda, J.,
and Maldonado-Basc´on, S. (2011). Real-time human
segmentation in infrared videos. Expert Systems with
Applications, 38:2577–2584.
Gascue˜na, J. and Fern´andez-Caballero, A. (2011). Agent-
oriented modeling and development of a person-
following mobile robot. Expert Systems with Appli-
cations, 38(4):4280–4290.
Isard, M. and Blake, A. (1998). Condensation - conditional
density propagation for visual tracking. International
Journal of Computer Vision, 29:5–28.
Koller, D., Danilidis, K., and Nagel, H.-H. (1993). Model-
based object tracking in monocular image sequences
of road traffic scenes. International Journal of Com-
puter Vision, 10:257–281.
Lavee, G., Rivlin, E., and Rudzsky, M. (2009). Understand-
ing video events: a survey of methods for automatic
interpretation of semantic occurrences in video. IEEE
Transactions on Systems, Man, and Cybernetics, Part
C: Applications and Reviews, 39(5):489–504.
L´ezoray, O. and Charrier, C. (2009). Color image segmen-
tation using morphological clustering and fusion with
automatic scale selection. Pattern Recognition Let-
ters, 30:397–406.
Maldonado-Basc´on, S., Lafuente-Arroyo, S., Gil-Jim´enez,
P., G´omez-Moreno, H., and L´opez-Ferreras, F. (2007).
Road-sign detection and recognition based on support
vector machines. IEEE Transactions on Intelligent
Transportation Systems, 8(2):264–278.
Masoud, O. and Papanikolopoulos, N. (2001). A novel
method for tracking and counting pedestrians in real-
time using a single camera. IEEE Transactions on Ve-
hicular Technology, 50(5):1267–1278.
McCane, B., Galvin, B., and Novins, K. (2002). Algorith-
mic fusion for more robust feature tracking. Interna-
tional Journal of Computer Vision, 49:79–89.
Moreno-Noguer, F., Sanfeliu, A., and Samaras, D. (2008).
Dependent multiple cue integration for robust track-
ing. IEEE Transactions on Pattern Analysis and Ma-
chine Intelligence, 30:670–685.
Natarajan, P. and Nevatia, R. (2008). View and scale in-
variant action recognition using multiview shape-flow
models. In IEEE Conference on Computer Vision and
Pattern Recognition, pages 1–8.
Neumann, B. and M¨oller, R. (2008). On scene interpretation
with description logics. Image and Vision Computing,
26:82–101.
Regazzoni, C. and Marcenaro, L. (2000). Object detection
and tracking in distributed surveillance systems using
multiple cameras. Kluwer Academic Publishers.
Ulusoy, I. and Bishop, C. (2005). Generative versus dis-
criminative methods for object recognition. In IEEE
Computer Society Conference on Computer Vision
and Pattern Recognition, volume 2, pages 258–265.
Yilmaz, A., Shafique, K., and Shah, M. (2003). Target
tracking in airborne forward looking infrared imagery.
Image and Vision Computing, 21(7):623–635.
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