Title of article :
Efficient Object Tracking Using Optimized K-means Segmentation and Radial Basis Function Neural Networks
Author/Authors :
Asvadi، Alireza نويسنده Faculty of Electrical & Computer Engineering , , Karami، MohammadReza نويسنده Faculty of Electrical & Computer Engineering , , Baleghi، Yasser نويسنده Faculty of Electrical & Computer Engineering ,
Issue Information :
فصلنامه با شماره پیاپی 13 سال 2011
Abstract :
Abstract—In this paper, an improved method for object tracking is proposed using Radial Basis Function Neural
Networks. Optimized k-means color segmentation is employed for detecting an object in first frame. Next the pixelbased
color features (R, G, B) from object is used for representing object color and color features from surrounding
background is extracted and extended to develop an extended background model. The object and extended
background color features are used to train Radial Basis Function Neural Network. The trained RBFNN is employed
to detect object in subsequent frames while mean-shift procedure is used to track object location. The performance of
the proposed tracker is tested with many video sequences. The proposed tracker is illustrated to be able to track
object and successfully resolve the problems caused by the camera movement, rotation, shape deformation and 3D
transformation of the target object. The proposed tracker is suitable for real-time object tracking due to its low
computational complexity.
Journal title :
International Journal of Information and Communication Technology Research
Journal title :
International Journal of Information and Communication Technology Research