利用智能手机惯性传感器进行室内定位

Yang Liu, M. Dashti, Mohd Amiruddin Abd Rahman, Jie Zhang
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引用次数: 37

摘要

著名的指纹识别技术通过统计学习信号与位置的关系来定位用户。然而,收集大量的标记数据来训练一个准确的定位模型是昂贵和劳动密集型的。本文建立了一种适用于无处不在的智能手机平台的经济且易于部署的室内定位模型。该方法通过惯性定位系统处理嵌入式惯性传感器读数。结合建筑物地图约束和惯性定位结果,提出了一种粒子滤波方法来估计用户的位置。为了提高算法的收敛速度,使用WiFi信号实现用户的初始/在线房间级定位。为了达到房间级别的准确性,只需要非常少的训练WiFi数据,即每个房间或走廊的每一段数据。提出了一种新的众包技术来建立和更新训练数据库。在此基础上,提出并评价了一种室内定位系统。结果表明,在不需要密集的无线站点测量要求的情况下,可以实现与以前方法相当的定位精度。
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Indoor localization using smartphone inertial sensors
Celebrated fingerprinting techniques localize users by statistically learning the signal to location relations. However, collecting a lot of labelled data to train an accurate localization model is expensive and labour-intensive. In this paper, an economic and easy-to-deploy indoor localization model suitable for ubiquitous smartphone platforms is established. The method processes embedded inertial sensors readings through a inertial localization system. A particle filter is developed to integrate the building map constraints and inertial localization results to estimate user's location. To increase the algorithm convergence rate, the user's initial/on-line room-level localization is achieved using WiFi signals. To achieve room-level accuracy, only very few training WiFi data, i.e. one per room or per segment of a corridor, are required. A novel crowdsourcing technique to build and update training database is presented. On these basis, an indoor localization system is proposed and evaluated. The results show that comparable location accuracy to previous approaches without even dense wireless site survey requirements is achievable.
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