Model-based sensor fusion and filtering for localization of a semi-autonomous robotic vehicle*

C. Teodorescu, Irving Caplan, Harry Eberle, T. Carlson
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引用次数: 3

Abstract

This paper refines a physically-inspired model governing the dynamic motion of a vehicle. We present a method used to perform experimental parameter calibration, and then use this model to build an observer (an extended Kalman filter). Experimental results with a robotic vehicle fitted with a prototype kit focus on recovering the truthful real-world information in the context of systematic errors (a faulty wheel encoder sensor), randomly occurring errors (a faulty ultrasonic sensor) and simplifying model assumptions (e.g. usage of two identical motors). We show that our model-based approach is able to perform reasonably well even under these extreme circumstances.
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基于模型的传感器融合与滤波在半自主机器人车辆定位中的应用*
本文改进了一个受物理启发的控制车辆动态运动的模型。我们提出了一种用于进行实验参数校准的方法,然后使用该模型构建观测器(扩展卡尔曼滤波器)。配备原型套件的机器人车辆的实验结果侧重于在系统错误(车轮编码器传感器故障),随机发生的错误(超声波传感器故障)和简化模型假设(例如使用两个相同的电机)的背景下恢复真实的现实世界信息。我们表明,即使在这些极端情况下,我们基于模型的方法也能够表现得相当好。
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