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Real-time Moving Object Recognition and Tracking Using The Wavelet-based Neural Network and Invariant Moments  

Kim, Jong-Bae (Dept. of Computer Eng., Seoul Digital University)
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Abstract
The present paper propose a real-time moving object recognition and tracking method using the wavelet-based neural network and invariant moments. Candidate moving region detection phase which is the first step of the proposed method detects the candidate regions where a pixel value changes occur due to object movement based on the difference image analysis between continued two image frames. The object recognition phase which is second step of proposed method recognizes the vehicle regions from the detected candidate regions using wavelet neurual-network. From object tracking Phase which is third step the recognized vehicle regions tracks using matching methods of wavelet invariant moments bases to recognized object. To detect a moving object from image sequence the candidate regions detection phase uses an adaptive thresholding method between previous image and current image as result it was robust surroundings environmental change and moving object detections were possible. And by using wavelet features to recognize and tracking of vehicle, the proposed method decrease calculation time and not only it will be able to minimize the effect in compliance with noise of road image, vehicle recognition accuracy became improved. The result which it experiments from the image which it acquires from the general road image sequence and vehicle detection rate is 92.8%, the computing time per frame is 0.24 seconds. The proposed method can be efficiently apply to a real-time intelligence road traffic surveillance system.
Keywords
wavelet transform; neural network; invariant moments;
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1 G. L. Foresti, "Object recognition and tracking for remote video surveillance", IEEE Trans. on Circuits and Systems for Video Technology, Vol. 9, no. 7, pp. 1045-1062, 1999   DOI   ScienceOn
2 G. L. Foresti, V. Murino, C. Regazzoni, "Vehicle recognition and tracking from road image sequences", IEEE Trans. on Vehicular Technology, Vol 48, no. 1, pp. 301-318, 1999   DOI   ScienceOn
3 J. B. Kim, H. J. Kim, "Multiresolution-Based Watersheds for Efficient Image Segmentation", Pattern Recognition Letter, Vol. 24, no. 1, pp. 473-488, 2003   DOI   ScienceOn
4 C. E. Bae, J. B. Kim and H. J. Kim, "Moving Object Segmentation Using Adaptive Thresholding and K-Means Clustering", the KISS. Fall Workshop on CVPR, pp. 23-24, 2001
5 J. B. Kim, C. W. Lee, K. M. Lee, T. S. Yun, H. J. Kim, "Wavelet-based vehicle tracking for Automatic Traffic Surveillance", IEEE TENCON'01, Vol. 1, pp. 313-316, 2001
6 M. Betke, E. Haritaoglu, L. S. Davis, "Highway scene analysis in hard real-time", IEEE Conference on Intelligent Transportation System, pp. 812-817, 1997
7 J. Zhou, D. Gao, D. Zhang, "Moving Vehicle Detection for Automatic Traffic Monitoring", IEEE Trans. on Vehicular Technology, Vol. 56, no. 1, pp. 51-59, 2007   DOI   ScienceOn
8 A. Talukder, S. Goldberg, L. Matthies, A. Ansar, "Real-time detection of moving objects in a dynamic scene from moving robotic vehicles", IEEE/RSJ International Conference on Intelligent Robots and Systems, Vol. 2, pp. 1308-1313, 2003
9 P. R. Liu, M. Q.-H. Meng, P. X. Liu, "Moving object segmentation and detection for monocular robot based on active contour model", Electronics Letters, Vol 41, no. 24, pp. 1320-1322, 2005   DOI   ScienceOn
10 R. Cucchiara, M. Piccardi, M. P. Mello, "Image analysis and rule-based reasoning for a traffic monitoring system", IEEE Trans. on Intelligent Transportation Systems, Vol. 1, no. 2, pp. 119-130, 2000   DOI
11 W. Junwen, Z. Xuegong, "A PCA classifier and its application in vehicle detection", IEEE International Joint Conference on Neural Networks, Vol. 1, pp. 600-604, 2001
12 J. C. McCall, M. M. Trivedi, "Video-based lane estimation and tracking for driver assistance: survey, system, and evaluation", IEEE Trans. on Intelligent Transportation Systems, Vol. 7, no. 1, pp. 20-37, 2006   DOI   ScienceOn
13 R. C. Gonzalez, Digital Image Processing, Prentice Hall, 2004
14 J. B. Kim, H. J. Kim, "Efficient Region-Based Motion Segmentation for a Video Monitoring System", Pattern Recognition Letter, Vol. 24, no. 1, pp. 113-128, 2003   DOI   ScienceOn
15 J. B. Kim, K. K. Kim, H. J. Kim, "Learning-Based Approach For License Plate Recognition", Proceeding of The 1th KISPS Summer Conference, Vol. 1, no. 1, pp. 273-276, 2000
16 R. Cucchiara, C. Grana, M. Piccardi, A. Prati, "Detecting moving objects, ghosts, and shadows in video streams", IEEE Trans. on Pattern Analysis and Machine Intelligence, Vol. 25, no. 10, pp. 1337-1342, 2003   DOI   ScienceOn
17 T. Alexandropoulos, S. Boutas, V. Loumos, E. Kayafas, "Real-time change detection for surveillance in public transportation", IEEE Conference on Advanced Video and Signal Based Surveillance, pp. 58-63, 2005