Robot Localization Using RE and Inertial Sensors

M. Zmuda, A. Elesev, Y. Morton
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引用次数: 4

Abstract

A mobile robot must know its position in order to operate autonomously. The process of determining the robot's absolute position from sensor data is called robot localization. Sonar, inertial, RF, and laser sensors can all be used for navigation and localization purposes. These sensors can achieve good accuracy when operating in certain conditions. For example, sonar is useful when operating in a mapped environment containing known obstacles. Inertial sensors have trouble with drift, which is accentuated when moving continuously for long periods of time. By merging the results from multiple sensors, the accuracy over a wider range of conditions can be obtained. This work proposes a technique of merging heterogeneous signals from inertial and RF sensors. Since sensors have errors associated with their readings, the robot's state will be represented probabilistically. Based on the sensors used in this work, the robot's position, velocity, and acceleration will be estimated using a joint probability distribution function (PDF). At each time step, this PDF will be updated based on the RF readings and then updated again based on the readings from the inertial sensor. The proposed algorithm will be applied to simulation of an uncluttered, level environment. The accuracy of the localization algorithm is compared to the accuracies obtained by other localization algorithms. The results show better localization accuracy when using the RF and inertial sensors together.
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基于RE和惯性传感器的机器人定位
移动机器人必须知道自己的位置才能自主操作。从传感器数据中确定机器人绝对位置的过程称为机器人定位。声纳、惯性、射频和激光传感器都可以用于导航和定位目的。这些传感器在一定条件下工作时可以达到很好的精度。例如,声纳在包含已知障碍物的地图环境中工作时很有用。惯性传感器有漂移的问题,当长时间连续移动时,这种问题会加剧。通过合并多个传感器的结果,可以获得更大范围条件下的精度。本文提出了一种融合来自惯性和射频传感器的异构信号的技术。由于传感器的读数存在误差,因此机器人的状态将以概率方式表示。基于这项工作中使用的传感器,机器人的位置、速度和加速度将使用联合概率分布函数(PDF)进行估计。在每个时间步,该PDF将根据RF读数更新,然后根据惯性传感器的读数再次更新。提出的算法将应用于一个整洁的水平环境的仿真。将该定位算法的精度与其他定位算法的精度进行了比较。结果表明,射频传感器与惯性传感器结合使用时,定位精度更高。
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