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Application of Kalman filter on mobile robot self-localization 被引量:4

Application of Kalman filter on mobile robot self-localization
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摘要 Self-localization is a fundamental requirement for the mobile robot. Robot usually contains a large number of dif- ferent sensors, which provide the information of robot localization, and all the sensor information should be considered for the optimal location. Kalman filter is efficient to realize the information fusion. Used as an efficient sensor fusion algorithm, Kalman filter is an advanced filtering technique which can reduce errors of the position and orientation of the sensors. Kalman filter has been paied much attention to robot automation and solutions to solve uncertainties such as robot localization, navigation, following, tracking, motion control, estimation and prediction. The paper briefly describes Kalman filter theory, and establishes a simple mathematical model based on muti-sensor mobile robot. Meanwhile, Kalman filter is used in robot self-localization by simulations, and it is demonstrated by simulations that Kalman filter is effective.
出处 《Journal of Measurement Science and Instrumentation》 CAS 2014年第2期52-54,共3页 测试科学与仪器(英文版)
基金 Research Fund for the Doctoral Program of Higher Education of China(No.20123718120007)
关键词 Kalman filter mobile robot SELF-LOCALIZATION target orientation 卡尔曼滤波器 移动机器人 自主定位 目标定向
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参考文献10

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