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http://dx.doi.org/10.7780/kjrs.2008.24.3.235

Mean-Shift Blob Clustering and Tracking for Traffic Monitoring System  

Choi, Jae-Young (College of IT, Kyungwon University)
Yang, Young-Kyu (College of IT, Kyungwon University)
Publication Information
Korean Journal of Remote Sensing / v.24, no.3, 2008 , pp. 235-243 More about this Journal
Abstract
Object tracking is a common vision task to detect and trace objects between consecutive frames. It is also important for a variety of applications such as surveillance, video based traffic monitoring system, and so on. An efficient moving vehicle clustering and tracking algorithm suitable for traffic monitoring system is proposed in this paper. First, automatic background extraction method is used to get a reliable background as a reference. The moving blob(object) is then separated from the background by mean shift method. Second, the scale invariant feature based method extracts the salient features from the clustered foreground blob. It is robust to change the illumination, scale, and affine shape. The simulation results on various road situations demonstrate good performance achieved by proposed method.
Keywords
background extraction; mean-shift; feature point; clustering; SIFT; tracking;
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1 Comaniciu, D. and P. Meer, 2002. Mean shift: a robust approach toward feature space analysis. IEEE Trans. PAMI, 24(5): 603-619   DOI   ScienceOn
2 Lindeberg, T., 1998. Feature detection with automatic scale selection, Int'l J. Computer Vision, 30(2): 77-116
3 Choi, J. Y., J. W. Choi, and Y. K. Yang, 2007. Improved tracking of multiple vehicles using invariant feature-based matching, Lecture Note in Computer Science, 4815: 649-656   DOI   ScienceOn
4 Comaniciu, D., V. Ramesh, and P. Meer, 2003. Kernel-based object tracking, IEEE Trans. PAMI, 25(5): 564-577   DOI   ScienceOn
5 Collins, R., 2003. Mean-shift blob tracking through scale space, IEEE conf. Computer Vision and Pattern Recognition
6 Kadir, T. and M. Brady, 2001. Scale, saliency and image description, Int'l J. Computer Vision, 45(2): 83-105   DOI
7 Comaniciu, D. and P. Meer, 1997. Robust analysis of feature spaces: Color image segmentation. IEEE conf. Computer Vision and Pattern Recognition, 750-755
8 Lowe, D. G., 2004. Distinctive image features from scale-invariant keypoints, Int'l J. Computer Vision, 60(2): 91-110   DOI
9 Mikolajczyk, K. and C. Schmid, 2005. A performance evaluation of local descriptors, IEEE Trans. PAMI, 27(10): 1615-1630   DOI
10 Fukunaga, K. and L. D. Hostetler, 1975. The estimation of the gradient of a density function, with applications in pattern recognition, IEEE Trans. Information Theory, 21(1): 32-40   DOI
11 Kanhere, N. K., S. J. Pundlik, and S. T. Birchfield, 2005. Vehicle segmentation and tracking from a low-angle off-axis camera, IEEE conf. Computer Vision and Pattern Recognition
12 Meer, P. and B. Georgescu, 2001. Edge detection with embedded confidence, IEEE Trans. PAMI, 23(12): 1351-1365   DOI   ScienceOn
13 DeMenthon, D. and R. Megret, 2002. Spatio-temporal segmentation of video by hierarchical mean shift analysis, Proc. Statistical Methods in Video Processing Workshop, Denmark