Full text: Proceedings (Part B3b-2)

The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B3b. Beijing 2008 
604 
grid vs map fusion mode times 
Figure 10: ATU and SDF execution times for both modes 
7. CONCLUSIONS 
This paper presented an automated solution for visual traffic 
monitoring based on a network of distributed tracking units. 
The system can be easily adjusted and parameterised in order to 
be used in several traffic monitoring applications, as it was built 
based on results acquired from two diverse pilot installations. 
The first prototype, installed at an airport APRON, was using 
an outdoor scene with large field of view while the second 
prototype, installed in a highway tunnel, was using an indoors 
scene with smaller distances and more occlusions. The results 
presented were focused on the two most important modules of 
the system, the background extraction method and the data 
fusion technique. After both qualitative and quantitative 
evaluation of multiple alternatives, the non-parametric 
modelling method was chosen as the best solution for the 
system, regarding the background extraction module. On the 
other hand, both the data fusion techniques tested showed 
satisfying behaviour under different situations and the final 
choice between the two should depend on the specific 
application demands and infrastructure. An interesting future 
extension is to take advantage of the low bandwidth output of 
the SDF server in order to create a 3D synthetic representation 
of the scene under surveillance, which could be rendered at 
remote 3D displays. 
REFERENCES 
Blackman, S., Popoli, R., 1999. Design and analysis of modern 
tracking systems. Artech House, Boston, USA. 
Borg, M., Thirde, D., Ferryman, J., Fusier, F., Valentin, V., 
Brémond, F., Thonnat, M., Aguilera, J., Kampel, M., 2005. 
Visual Surveillance for Aircraft Activity Monitoring. VS-PETS 
2005, Beijing, China. 
Cox, J., Hingorani, S.L., 1996. An Efficient Implementation of 
Reid's Multiple Hypothesis Tracking Algorithm and its 
Evaluation for the Purpose of Visual Tracking. IEEE 
Transactions on pattern analysis and machine intelligence, Vol. 
18, pp. 138-150. 
Dimitropoulos, K., Grammalidis, N., Simitopoulos, D., 
Pavlidou, N., Strintzis, M., 2005. Aircraft Detection and 
Tracking using Intelligent Cameras, IEEE International 
Conference on Image Processing, Genova, Italy, pp. 594-597. 
Elgammal, A., Harwood, D., Davis, L., 2000. Non-parametric 
Model for Background Subtraction.Computer Vision. ECCV 
2000. 
Hu, M-K., 1962. Visual pattern recognition by moment 
invariants. IRE Trans, on Information Theory, IT-8:pp, 179-187. 
KaewTraKulPong, P., Bowden, R., 2001. An Improved 
Adaptive Background Mixture Model for Real-time Tracking 
with Shadow Detection. In 2nd European Workshop on 
Advanced Video-based Surveillance Systems, Kingston, UK. 
Kastrinaki, V., Zervakis, M., Kalaitzakis, K., 2003. A survey of 
video processing techniques for traffic applications. Image 
Vision Computing, Volume: 21,Issue: 4, pp. 359 - 381. 
Khan, S., Shah, M., 2006. A multiview approach to tracking 
people in crowded scenes using a planar homography constraint. 
9th European Conference on Computer Vision, Graz, Austria. 
Le Bouffant, T., Siebel, N. T., Cook, S., Maybank, S., 2002. 
Reading People Tracker Reference Manual (Version 1.12), 
Technical Report No. RUCS/2002/TR/11/001/A, Department of 
Computer Science, University of Reading. 
Litos, G., Zabulis, X., Triantafyllidis, G.A.,2006. Synchronous 
Image Acquisition based on Network Synchronization, IEEE 
Workshop on Three-Dimensional Cinematography. 
Liyuan Li, Weimin Huang, Irene Y.H. Gu, Qi Tian, 2003. 
Foreground Object Detection from Videos Containing Complex 
Background. In International Multimedia Conference. 
Lluis, J., Miralles, X., Bastidas, O., 2005. Reliable Real-Time 
Foreground Detection for Video Surveillance Application. In 
VSSN'05. 
Michalopoulos, G., 1991. Vehicle Detection Video Through 
Image Processing: The Autoscope System. IEEE Transactions 
on Vehicular Technology, Vol. 40, No. 1. 
Pavlidou, N., Grammalidis, N., Dimitropoulos, K., 
Simitopoulos, D., Gilbert, A., Piazza, E., Herrlich, C., Heidger, 
R., Strintzis, M., 2005. Using Intelligent Digital Cameras to 
Monitor Aerodrome Surface Traffic. IEEE Intelligent Systems. 
Vol. 20, No. 3, pp.76-81. 
Thirde, D., Borg, M., Ferryman, J., Fusier, F., Valentin, V., 
Bremond, F., Thonnat, M., 2006. A Real-Time Scene 
Understanding System for Airport Apron Monitoring. In 
Proceedings of the Fourth IEEE international Conference on 
Computer Vision Systems. 
ACKNOWLEDGEMETS 
This work was supported by the General Secretariat of Research 
and Technology Hellas under the InfoSoc “TRAVIS: Traffic 
VISual monitoring” project and the EC under the FP6 1ST 
Network of Excellence: “3DTV-Integrated Three-Dimensional 
Television - Capture, Transmission, and Display” (contract 
FP6-511568).
	        
Waiting...

Note to user

Dear user,

In response to current developments in the web technology used by the Goobi viewer, the software no longer supports your browser.

Please use one of the following browsers to display this page correctly.

Thank you.