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Relative observation for multi-robot collaborative localisation based on multi-source signals

机译:基于多源信号的多机器人协同定位的相对观测

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This paper describes a synthesising method for multi-robot collaborative localisation. A distributed extended Kalman filter (EKF) based on robot odometry and external North Star signals for data fusion is first designed for the localisation of individuals in the robot group. Relying on relative observation by infrared sensors and gyroscopes mounted on robots, and the 'uncertainty volume' strategy, the positions estimated by EKFs are further corrected for precising the localisation process. The localisation accuracy based on different sensing regimes is tested. Sensor correlations and uncertainties are analysed for predicting error propagation and to accommodate sensing deviations. The multi-source signals are then synthesised for the collaborative localisation for a multi-robot system without introducing excessive computation. Finally, this work is verified by both simulation and experiments with real robots, i.e. the Festo Robotinos under different scenarios.
机译:本文介绍了一种用于多机器人协作定位的综合方法。首先设计了基于机器人测距和外部北极星信号的分布式扩展卡尔曼滤波器(EKF),用于数据融合,以定位机器人组中的个体。依靠安装在机器人上的红外传感器和陀螺仪的相对观测,以及“不确定量”策略,对EKF估计的位置进行了进一步校正,以指导定位过程。测试了基于不同传感方式的定位精度。分析传感器的相关性和不确定性,以预测误差传播并适应传感偏差。然后,在不引入过多计算的情况下,将多源信号合成以用于多机器人系统的协作定位。最后,通过使用真实机器人(即在不同情况下的Festo Robotinos)进行的仿真和实验验证了这项工作。

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