Mobile Phone-Based Displacement Estimation for Opportunistic Localisation Systems

Inge Bylemans, M. Weyn, M. Klepal
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引用次数: 81

Abstract

The accelerometers integrated in today’s phones can be used to estimate the distance travelled from the accelerations made while walking. The placement of the sensor on the body is important to take into consideration. In this paper, the accelerations recorded with a daily-used phone in the trouser pocket were processed on a mobile device to detect steps and estimate the distance travelled. The outcome of the distance estimates shows an error of 0.05 metres per one metre and can be improved through calibration. This distance was applied in the motion model of a particle filter, and fused with a map of the building. The results establish that the estimates of the algorithm are valuable when fusing with other technologies or environment information, to aid the estimation of the location.
基于手机的机会定位系统位移估计
如今手机中集成的加速度计可以用来估算行走时产生的加速度所走过的距离。传感器在身体上的位置是需要考虑的重要因素。在本文中,用放在裤子口袋里的日常使用的手机记录的加速度在移动设备上进行处理,以检测步数并估计行进距离。距离估计的结果显示,每一米误差为0.05米,可以通过校正来改善。这个距离被应用到粒子过滤器的运动模型中,并与建筑的地图融合在一起。结果表明,当与其他技术或环境信息融合时,该算法的估计是有价值的,可以帮助估计位置。
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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