Moving object recognition by a shape-based neural fuzzy network

Moving object recognition by a shape-based neural fuzzy network is proposed in this paper. The moving objects considered in this paper include pedestrians, vehicles, motorcycle, and dogs. Given the shape of the moving object, its contour is calculated by contour following. The distance between the contour center and each contour point is calculated and smoothed. Parts of the feature vector are obtained from discrete Fourier transform coefficients of the smoothed distances. The length-to-width ratio of the object's shape, which is derived from vertical and horizontal projection of the shape of the object, is also used as a feature. Based on the feature vector, the self-constructing neural fuzzy inference network (SONFIN) is used for recognition. To verify the performance of the proposed approach, two experiments were performed. In the first experiment, the shape of an object was extracted manually. In the second experiment, the shape of an object was extracted automatically from a series of image processes, including gray-based and edge-based image subtractions and morphological operations. The experiments show that the proposed approach can recognize moving objects with high accuracy. SONFIN performance is also shown to be better than back-propagation neural network and radial basis function network performance.

[1]  Hironobu Fujiyoshi,et al.  Real-time human motion analysis by image skeletonization , 1998, Proceedings Fourth IEEE Workshop on Applications of Computer Vision. WACV'98 (Cat. No.98EX201).

[2]  John Moody,et al.  Fast Learning in Networks of Locally-Tuned Processing Units , 1989, Neural Computation.

[3]  Avinash C. Kak,et al.  Vision for Mobile Robot Navigation: A Survey , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[4]  Amit Singhal,et al.  Computer Vision and Fuzzy-Neural Systems , 2004, J. Electronic Imaging.

[5]  Quming Zhou,et al.  Tracking and Classifying Moving Objects from Video , 2001 .

[6]  Badrinath Roysam,et al.  Image change detection algorithms: a systematic survey , 2005, IEEE Transactions on Image Processing.

[7]  Tieniu Tan,et al.  A survey on visual surveillance of object motion and behaviors , 2004, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[8]  Kang-Hyun Jo,et al.  Hands shape recognition using moment invariant for the Korean sign language recognition , 2003, 7th Korea-Russia International Symposium on Science and Technology, Proceedings KORUS 2003. (IEEE Cat. No.03EX737).

[9]  Chandrika Kamath,et al.  Robust techniques for background subtraction in urban traffic video , 2004, IS&T/SPIE Electronic Imaging.

[10]  Hironobu Fujiyoshi,et al.  Moving target classification and tracking from real-time video , 1998, Proceedings Fourth IEEE Workshop on Applications of Computer Vision. WACV'98 (Cat. No.98EX201).

[11]  Chin-Teng Lin,et al.  An online self-constructing neural fuzzy inference network and its applications , 1998, IEEE Trans. Fuzzy Syst..

[12]  Kai Zhang,et al.  Multi-view face identification and pose estimation using B-spline interpolation , 2005, Inf. Sci..

[13]  C. S. George Lee,et al.  Neural fuzzy systems: a neuro-fuzzy synergism to intelligent systems , 1996 .

[14]  Ming-Kuei Hu,et al.  Visual pattern recognition by moment invariants , 1962, IRE Trans. Inf. Theory.

[15]  C.-C. Jay Kuo,et al.  Wavelet descriptor of planar curves: theory and applications , 1996, IEEE Trans. Image Process..

[16]  Guojun Lu,et al.  A Comparative Study of Three Region Shape Descriptors , 2002 .

[17]  Jenq-Neng Hwang,et al.  Fast and automatic video object segmentation and tracking for content-based applications , 2002, IEEE Trans. Circuits Syst. Video Technol..

[18]  Kwanghee Nam,et al.  Object recognition of one-DOF tools by a back-propagation neural net , 1995, IEEE Trans. Neural Networks.

[19]  Liang Zhao,et al.  Stereo- and neural network-based pedestrian detection , 2000, IEEE Trans. Intell. Transp. Syst..

[20]  Sven Loncaric,et al.  A survey of shape analysis techniques , 1998, Pattern Recognit..

[21]  Stanislaw Osowski,et al.  Neural networks for classification of 2-D patterns , 2000, WCC 2000 - ICSP 2000. 2000 5th International Conference on Signal Processing Proceedings. 16th World Computer Congress 2000.

[22]  Herbert Freeman,et al.  On the Encoding of Arbitrary Geometric Configurations , 1961, IRE Trans. Electron. Comput..

[23]  Hao Feng,et al.  The application of DBF neural networks for object recognition , 2004, Inf. Sci..

[24]  A. Enis Çetin,et al.  Computationally efficient wavelet affine invariant functions for shape recognition , 2004, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[25]  M.T. Razali,et al.  Detection and Classification of Moving Object for Smart Vision Sensor , 2006, 2006 2nd International Conference on Information & Communication Technologies.