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A Floor-Map-Aided WiFi/Pseudo-Odometry Integration Algorithm for an Indoor Positioning System

机译:用于室内定位系统的楼层地图辅助WiFi /伪测距法集成算法

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This paper proposes a scheme for indoor positioning by fusing floor map, WiFi and smartphone sensor data to provide meter-level positioning without additional infrastructure. A topology-constrained K nearest neighbor (KNN) algorithm based on a floor map layout provides the coordinates required to integrate WiFi data with pseudo-odometry (P-O) measurements simulated using a pedestrian dead reckoning (PDR) approach. One method of further improving the positioning accuracy is to use a more effective multi-threshold step detection algorithm, as proposed by the authors. The “go and back” phenomenon caused by incorrect matching of the reference points (RPs) of a WiFi algorithm is eliminated using an adaptive fading-factor-based extended Kalman filter (EKF), taking WiFi positioning coordinates, P-O measurements and fused heading angles as observations. The “cross-wall” problem is solved based on the development of a floor-map-aided particle filter algorithm by weighting the particles, thereby also eliminating the gross-error effects originating from WiFi or P-O measurements. The performance observed in a field experiment performed on the fourth floor of the School of Environmental Science and Spatial Informatics (SESSI) building on the China University of Mining and Technology (CUMT) campus confirms that the proposed scheme can reliably achieve meter-level positioning.
机译:本文提出了一种室内定位方案,该方案通过融合楼层地图,WiFi和智能手机传感器数据来提供仪表级定位,而无需其他基础设施。基于楼层地图布局的拓扑约束的K最近邻(KNN)算法提供了将WiFi数据与使用行人航位推算(PDR)方法模拟的伪测距(P-O)测量值集成所需的坐标。作者提出的一种进一步提高定位精度的方法是使用更有效的多阈值步检测算法。使用基于自适应衰落因子的扩展卡尔曼滤波器(EKF),采用WiFi定位坐标,PO测量值和融合航向角,可以消除WiFi算法参考点(RP)的不正确匹配导致的“后退”现象。作为观察。 “横墙”问题的解决是基于地板图辅助的粒子滤波算法的发展,它通过对粒子加权来解决,从而也消除了源自WiFi或P-O测量的总体误差影响。在中国矿业大学(CUMT)校园的环境科学与空间信息学院(SESSI)四楼进行的现场实验中观察到的性能证实了该方案可以可靠地实现仪表级定位。

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