Indoor positioning system using walking pattern classification

F. D. Cillis, Francesca De Simio, L. Faramondi, Federica Inderst, F. Pascucci, R. Setola
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引用次数: 17

Abstract

In the age of automation the ability to navigate persons and devices in indoor environments has become increasingly important for a rising number of applications. While Global Positioning System can be considered a mature technology for outdoor localization, there is no off-the-shelf solution for indoor tracking. In this contribution, an infrastructure-less Indoor Positioning System based on walking feature detection is presented. The proposed system relies on the differences characterizing different human actions (e.g., walking, ascending or descending stairs, taking the elevator). The motion features are extracted in time domain by exploiting data provided by a 9DoF Inertial Measurement Unit. The positioning algorithm is based on walking distance and heading estimation. Step count and step length are used to determine the walking distance, while the heading is computed by quaternions. An experimental setup has been developed. The collected results show that system guarantee room level accuracy during long trials.
室内定位系统采用行走模式分类
在自动化时代,在室内环境中导航人员和设备的能力对于越来越多的应用变得越来越重要。虽然全球定位系统可以被认为是户外定位的成熟技术,但对于室内跟踪还没有现成的解决方案。本文提出了一种基于步行特征检测的无基础设施室内定位系统。所提出的系统依赖于不同人类行为特征的差异(例如,行走、上下楼梯、乘电梯)。利用9DoF惯性测量单元提供的数据在时域中提取运动特征。定位算法基于步行距离和方向估计。步数和步长用于确定步行距离,而头部由四元数计算。建立了一套实验装置。收集的结果表明,该系统在长时间的试验中保证了房间级的精度。
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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