A mobile robot tracking using Kalman filter-based Gaussian Process in wireless sensor networks

Jinhong Lim, Jaehyun Yoo, H. Jin Kim
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引用次数: 3

Abstract

RSSI-based localization has a variety of possible applications, and the environment to obtain the required information is well-constructed in these days due to the prevalence of WiFi usage. However, it is difficult to apply this method directly to the real-world positioning, because there are several factors of uncertainty in the signal strength measurements. In this paper, it is proposed to incorporate dead-reckoning using encoder measurement only, and Kalman filter-based Gaussian Process to compensate the uncertainty. As encoder itself is not able to calibrate the accumulating error, and the measured RSSI data has a time-varying error, the defects of respective methods can be complemented by each other using Kalman filter. The performance of the proposed method is evaluated by two different simulations. The location of a mobile robot moving through the exact desired path is estimated first. Then, the result of controlling a mobile robot based on the estimated position is shown.
基于卡尔曼滤波的高斯过程无线传感器网络移动机器人跟踪研究
基于rssi的定位具有多种可能的应用,并且由于WiFi的普及,获取所需信息的环境在当今得到了很好的构建。然而,由于信号强度测量中存在一些不确定因素,因此很难将该方法直接应用于实际定位。本文提出了仅利用编码器测量结合航位推算的方法,并利用基于卡尔曼滤波的高斯过程来补偿航位推算的不确定性。由于编码器本身无法校准累积误差,且实测的RSSI数据具有时变误差,因此利用卡尔曼滤波可以弥补各自方法的缺陷。通过两个不同的仿真对该方法的性能进行了评价。首先估计移动机器人在期望路径上的位置。然后给出了基于估计位置的移动机器人控制结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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