Object Tracking Based on Active Contour Model by Neural Fuzzy Network
The computer image object tracking technologies are often applied to various kinds of research fields.It proposes real-time tracking object recognition by contour-based neural fuzzy network.It employs the active contour models and neural fuzzy network method to trace moving objects of the same kind and to record its paths simultaneously.To extract object’s feature vector,it uses contour-based model.The traditional background subtraction and object segmentation algorithms are modified to reduce operation complexity and achieve real-time performance.Finally,it uses the self-constructing neural fuzzy inference network to train and recognize moving objects.The experiment shows it can recognize four moving objects,including a pedestrian,a motorcycle,a car,and a dog,exactly.The experiment result shows the precision of this system is more than 90% under objects tracking,and the frame rate is more than 25 frames per second.
object tracking active contour models neural fuzzy network recognition.
Tian-ding Chen
Institute of Communications and Information Technology,Zhejiang Gongshang University,Hangzhou,China 310018
国际会议
International Conference on Modelling,Identification and Control(模拟、鉴定、控制国际会议)
上海
英文
2008-06-29(万方平台首次上网日期,不代表论文的发表时间)