Information Technology Reference
In-Depth Information
Future work will focus on automatic classification of object type, and shape
parametrization methods. Both approaches are expected to improve re-identification
results, and to provide means for creating a hybrid “first classify, then re-identify”
approach-based solutions.
Acknowledgments Research is subsidized by the European Commission within FP7 project
“ADDPRIV” (“Automatic Data relevancy Discrimination for a PRIVacy-sensitive video surveil-
lance” , Grant Agreement No. 261653). The authors wish to thank the Gda nsk Science and Tech-
nology Park for their help in establishing the test bed for the experiments described in the chapter.
References
1. Allen, R., Mcgeorge, P., Pearson, D., Milne, A.B.: Attention and expertise in multiple target
tracking. Appl. Cogn. Psychol. 18 (3), 337-347 (2004)
2. Antani, S., Kasturi, R., Jain, R.: A survey on the use of pattern recognition methods for abstrac-
tion, indexing and retrieval of images and video. Pattern Recognit. 35 (4), 945-965 (2002)
3. Bannour, H., Hlaoua, L., El Ayeb, B.: Survey of the adequate descriptor for content-based image
retrieval on the web: global versus local features. In: Conference en Recherche d'Information
et Applications CORIA, pp. 445-456. LSIS-USTV (2009)
4. Baxes, G.A.: Digital Image Processing: Principles and Applications. Wiley, New York (1994)
5. Bay, H., Ess, A., Tuytelaars, T., Van Gool, L.: Speeded-up robust features (SURF). Comput.
Vis. Image Underst. 110 (3), 346-359 (2008)
6. Breiman, L.: Random forests. Mach. Learn. 45 (1), 5-32 (2001)
7. Breiman, L., Friedman, J., Olshen, R., Stone, C.: Classification and Regression Trees. Chapman
and Hall, New York (1994)
8. Burger, W., Burge, M.J.: Principles of Digital Image Processing: Core Algorithms. Springer,
Berlin (2009)
9. Burger, W., Burge, M.J.: Principles of Digital Image Processing: Fundamental Techniques.
Springer, New York (2009)
10. Cavanagh, P., Alvarez, G.A.: Tracking multiple targets with multifocal attention. Trends Cogn.
Sci. 9 (7), 349-354 (2005)
11. Chang-yeon, J.: Face detection using LBP features. Final project report—CS 229 machine
learning (2008)
12. Cipolla, R., Battiato, S., Farinella, G.: Computer Vision: Detection, Recognition and Recon-
struction. Studies in Computational Intelligence. Springer, New York (2010)
13. Clausi, D.A.: An analysis of co-occurrence texture statistics as a function of grey level quan-
tization. Can. J. Remote Sens. 28 (1), 45-62 (2002)
14. Czyzewski, A., Lisowski, K.: Employing flowgraphs for forward route reconstruction in video
surveillance system. J. Intell. Inf. Syst. 40 , 1-15 (2013)
15. Dalka, P., Szwoch, G., Ciarkowski, A.: Distributed framework for visual event detection in
parking lot area. In: Dziech, A., Czyzewski, A. (eds.) Multimedia Communications, Services
and Security. Communications in Computer and Information Science, vol. 149, pp. 37-45.
Springer, Berlin (2011)
16. Dalka, P., Szwoch, G., Szczuko, P., Czyzewski, A.: Video content analysis in the Urban area
telemonitoring system. In: Tsihrintzis, G.A., Jain, L.C. (eds.) Multimedia Services in Intelligent
Environments, Smart Innovation, Systems and Technologies, vol. 3, pp. 241-261. Springer,
Berlin (2010)
17. Doyle, A., Lippert, R., Lyon, D.: Eyes Everywhere : The Global Growth of Camera Surveillance.
Routledge, London (2012)
 
Search WWH ::




Custom Search