Browse > Article

Image Processed Tracking System of Multiple Moving Objects Based on Kalman Filter  

Kim, Sang-Bong (Department of Mechanical Engineering, Pukyong National University)
Kim, Dong-Kyu (Department of Mechanical Engineering, Pukyong National University)
Kim, Hak-Kyeong (Department of Mechatronics Engineering, Pukyong National University)
Publication Information
Journal of Mechanical Science and Technology / v.16, no.4, 2002 , pp. 427-435 More about this Journal
Abstract
This paper presents a development result for image processed tracking system of multiple moving objects based on Kalman filter and a simple window tracking method. The proposed algorithm of foreground detection and background adaptation (FDBA) is composed of three modules: a block checking module(BCM), an object movement prediction module(OMPM), and an adaptive background estimation module (ABEM). The BCM is processed for checking the existence of objects. To speed up the image processing time and to precisely track multiple objects under the object's mergence, a concept of a simple window tracking method is adopted in the OMPM. The ABEM separates the foreground from the background in the reset simple tracking window in the OMPM. It is shown through experimental results that the proposed FDBA algorithm is robustly adaptable to the background variation in a short processing time. Furthermore, it is shown that the proposed method can solve the problems of mergence, cross and split that are brought up in the case of tracking multiple moving objects.
Keywords
Kalman Filter; Foreground Detection; Background Adaptation; Tracking; Multiple Moving Objects;
Citations & Related Records
연도 인용수 순위
  • Reference
1 Brofferio S. et al, 1990, 'A Background Updating Algorithm for Moving Object Scenes, 'Time-varying Image Processing and Moving Object Recognition, Vol. 2, Elsevier Publishers B. V., Amsterdam, The Netherlands, pp. 289-296
2 Chapman and Hall, Image Precessing, Analysis and Machine Vision, 2-6 Boundary Row, London SEI 8HN
3 Gonzalez R. C., 1992, Digital Image Processing, Addison Wesley
4 Samuel, B. and Robert, P., 1999, Design and Analysis of Modern Tracking Systems, Artech House
5 Kim, D. K., Kang, B. Ch. and Kim, S. B., 1998, 'Development of Counting and Trajectory Extraction Algorithms of Sperm Using Image Processing,' 13th KACC, pp. 881-884
6 Gregory A. B., 1994, Digital Image Processing, Wiley and Sons
7 Jee M. S., Kim S. B., 1994, 'Development of Two Dimensional Position Measuring for Floating Stucture Using an Image Processing Method,' Journal of Ocean engineering and technology, Vol. 8(2), pp. 22-27
8 Karmann K. P., Brandt A. V., 1990, 'Moving Object Recognition Using an Adaptive Background Memory,' duddl Time-varying Image Processing and Moving Object Recognition, Vol. 2, Elsevier Publishers B. V., Amsterdam, The Netherlands, pp. 297-307
9 Leung, M. K. and Yang, Y. H., 'Human Body Motion Segmentation In A Complex Dcene,' Pattern Recognition, Vol. 20, pp. 55-64   DOI   ScienceOn
10 Lewis, F. L., Applied Optimal Control & Estimation, Prentice-Hall Interna-tional, 1994
11 Wu, W. et al., 1996, 'Analysis of Sperm Motion by Trajectory Extraction from Image Sequence,' Journal of the Society of Instrument and Control Engineers, Vol. 32, pp. 597-603
12 Nagel, H. H., 'On the Estimation of Optical Flow;Relations Between Different Approaches and Some New Results,' Artificial Intelligence, Vol. 33, pp. 299-324   DOI   ScienceOn
13 Park, H. S., Kim, H. S. and Kim S. B., 1998, 'The Tracking of 2-D Moving Object Using the Digital Image Processing,' Proceedings of the KSPSE Autumn Annual Meetings '98, pp. 175-180
14 Tompson, W. B., Barnard, S. T., 1981, 'Low-Level Estimation and Interpolation Visual motion,' IEEE computer, Vol. 14(8), pp. 20-28   DOI   ScienceOn
15 Wang, H. and Daley, S., 1996, 'Actuator Fault Diagnosis;An Adaptive Observer Based Technique,' IEEE Trans. on Automatic Control, Vol. 41, No. 7, pp. 1073-1078   DOI   ScienceOn