KALMAN FILTER AND NARX NEURAL NETWORK FOR ROBOT VISION BASED HUMAN TRACKING
Emina Petrović, Žarko Ćojbašić, Danijela Ristić–Durrant, Vlastimir Nikolić, Ivan Ćirić, Srđan Matić
- 发表年份
- 2013
- 引用次数
- 8
摘要
Tracking human is an important and challenging problem in video-based intelligent robot systems. In this paper, a vision-based human tracking system is supposed to provide sensor input for vision-based control of a mobile robot that works in a team helping the human co-worker. A comparison between NARX neural network and Kalman filter in solving the prediction problem of human tracking in robot vision is presented. After collecting video data from a robot, simulation results obtained from the Kalman filter model are used to compare with the simulation results obtained from the NARX Neural network.
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