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Uncertainty Characterisation of Mobile Robot Localisation Techniques using Optical Surveying Grade Instruments

机译:使用光学测量级仪器的移动机器人定位技术的不确定度表征

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摘要

Recent developments in localisation systems for autonomous robotic technology have been a driving factor in the deployment of robots in a wide variety of environments. Estimating sensor measurement noise is an essential factor when producing uncertainty models for state-of-the-art robotic positioning systems. In this paper, a surveying grade optical instrument in the form of a Trimble S7 Robotic Total Station is utilised to dynamically characterise the error of positioning sensors of a ground based unmanned robot. The error characteristics are used as inputs into the construction of a Localisation Extended Kalman Filter which fuses Pozyx Ultra-wideband range measurements with odometry to obtain an optimal position estimation, all whilst using the path generated from the remote tracking feature of the Robotic Total Station as a ground truth metric. Experiments show that the proposed method yields an improved positional estimation compared to the Pozyx systems’ native firmware algorithm as well as producing a smoother trajectory.
机译:自主机器人技术的本地化系统的最新发展已成为在各种环境中部署机器人的驱动因素。在为最先进的机器人定位系统生成不确定性模型时,估算传感器测量噪声是至关重要的因素。在本文中,采用Trimble S7机器人全站仪形式的测量级光学仪器来动态表征地面无人机器人的定位传感器的误差。误差特性用作本地化扩展卡尔曼滤波器构造的输入,该滤波器将Pozyx超宽带距离测量与测距法融合在一起,以获得最佳位置估计,同时使用从机器人全站仪的远程跟踪功能生成的路径作为基本事实指标。实验表明,与Pozyx系统的本机固件算法相比,所提出的方法可改善位置估计,并产生更平滑的轨迹。

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