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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.

关键词

Kalman filterArtificial intelligenceComputer visionNonlinear autoregressive exogenous modelArtificial neural networkRobotComputer scienceTracking systemExtended Kalman filterTracking (education)

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