Browse > Article
http://dx.doi.org/10.5207/JIEIE.2007.21.4.011

Tracking Object Movement via Two Stage Median Operation and State Transition Diagram under Various Light Conditions  

Park, Goo-Man (Dept. of Media Engineering, Seoul National Univ. of Technology)
Publication Information
Journal of the Korean Institute of Illuminating and Electrical Installation Engineers / v.21, no.4, 2007 , pp. 11-18 More about this Journal
Abstract
A moving object detection algorithm for surveillance video is here proposed which employs background initialization based on two-stage median filtering and a background updating method based on state transition diagram. In the background initialization, the spatiotemporal similarity is measured in the subinterval. From the accumulated difference between the base frame and the other frames in a subinterval, the regions affected by moving objects are located. The median is applied over the subsequence in the subinterval in which regions share similarity. The outputs from each subinterval are filtered by a two-stage median filter. The background of every frame is updated by the suggested state transition diagram The object is detected by the difference between the current frame and the updated background. The proposed method showed good results even for busy, crowded sequences which included moving objects from the first frame.
Keywords
Background initialization; Background update; Moving object tracking;
Citations & Related Records
연도 인용수 순위
  • Reference
1 D. Gutchess, et aI., 'A Background Model Initialization Algorithm for Video Surveillance,' Proceedings of Eighth IEEE International Conference on Computer Vision, 2001, ICCV 2001, Vol.1, pp.733-740, July, 2001
2 C. Stauffer, W.E.L. Grimson, 'Adaptive Background Mixture Models for Real-time Tracking,' Proc.IEEE Conference on Computer Vision & Pattern Recognition, vol.2, pp.246-252, June, 1999
3 Hanzi Wang and David Suter, 'Background Initialization with A New Robust Statistical Approach,' Proceedings of 2nd Joint IEEE International Workshop on VS-PETS, pp.153-159,October,2005
4 C.R. Wren, et al., 'Pfinder: Real-time Tracking of the Human body,' PAMI 19(7): pp.780-785, 1997   DOI   ScienceOn
5 Marko Heikkila, and Matti Pietikainen, 'A Texture-Based Method for Modeling the Background and Detecting Moving Objects,' IEEE Trans. Pattern Analysis and Machine Intelligence, vol.28, no.4, pp.657-662, April, 2006   DOI   ScienceOn