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首页> 外文期刊>Journal of Intelligent & Robotic Systems: Theory & Application >EKF-Based Localization of a Wheeled Mobile Robot in Structured Environments
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EKF-Based Localization of a Wheeled Mobile Robot in Structured Environments

机译:在结构化环境中基于EKF的轮式移动机器人的本地化

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摘要

This paper deals with the problem of mobile-robot localization in structured environments. The extended Kalman filter (EKF) is used to localize the four-wheeled mobile robot equipped with encoders for the wheels and a laser-range-finder (LRF) sensor. The LRF is used to scan the environment, which is described with line segments. A prediction step is performed by simulating the kinematic model of the robot. In the input noise covariance matrix of the EKF the standard deviation of each robot-wheel's angular speed is estimated as being proportional to the wheel's angular speed. A correction step is performed by minimizing the difference between the matched line segments from the local and global maps. If the overlapping rate between the most similar local and global line segments is below the threshold, the line segments are paired. The line parameters' covariances, which arise from the LRF's distance-measurement error, comprise the output noise covariance matrix of the EKF. The covariances are estimated with the method of classic least squares (LSQ). The performance of this method is tested within the localization experiment in an indoor structured environment. The good localization results prove the applicability of the method resulting from the classic LSQ for the purpose of an EKF-based localization of a mobile robot.
机译:本文探讨了结构化环境中移动机器人的本地化问题。扩展的卡尔曼滤波器(EKF)用于定位配备了车轮编码器和激光测距仪(LRF)传感器的四轮移动机器人。 LRF用于扫描环境,以线段描述。通过模拟机器人的运动学模型来执行预测步骤。在EKF的输入噪声协方差矩阵中,每个机械手轮的角速度的标准偏差估计为与轮的角速度成比例。通过最小化来自局部和全局地图的匹配线段之间的差异来执行校正步骤。如果最相似的局部线段和全局线段之间的重叠率低于阈值,则将线段配对。由LRF的距离测量误差引起的线参数协方差包括EKF的输出噪声协方差矩阵。使用经典最小二乘法(LSQ)估计协方差。在室内结构化环境中的本地化实验中测试了此方法的性能。良好的定位结果证明了经典LSQ所产生的方法对于基于EKF的移动机器人定位的适用性。

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