Bluetooth-Based WKNNPF and WKNNEKF Indoor Positioning Algorithm

Sokliep Pheng, Ji Li, Xiaonan Luo, Y. Zhong, Zetao Jiang
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引用次数: 1

Abstract

Indoor Positioning System (IPS) in generally perform as a network of devices that always located the objects or people inside a building wirelessly. An IPS has direction relies nearby anchors and also can be entirely local to your smartphone. With the rapid growth and sharp increase in Indoor Positioning System (IPS) demand in the world, there are a lot of researchers trying to invent new algorithm to develop IPS. This paper proposed the Bluetooth-Base Indoor Positioning Algorithm. The RF characteristics such as RSSI and WLAN RSSI fingerprinting system normally formed by two phases, fist is offline phase and second is online phase. Fingerprinting system handling both off-line and online data and estimate the user’s location. Our algorithm design is a collection of Weighted K-Nearest Neighbors (WKNN) and Filtering algorithms by KALMAN Filter. Finally, to avoid the problems of IPS and get a better accurate we proposed two algorithms: Weighted K-Nearest Neighbors Particle Filter (WKNNPF) and Weighted K-Nearest Neighbors Extended Kalman Filter (WKNNEKF) compare to KNN and WKNN result. After comparing we found that the result of WKNNPF and WKNNEKF is better result than KNN and WKNN. The Probability in 3M of WKNN is about 79%, WKNNEKF is about 89%, and WKNNPF is about 95.1%. Among one of the proposed algorithms WKNNPF is better than WKNNEKF on accuracy 1.7-2 meters with 42.2m/s response time.
基于蓝牙的WKNNPF和WKNNEKF室内定位算法
室内定位系统(IPS)通常作为一个设备网络,始终以无线方式定位建筑物内的物体或人员。IPS的方向依赖于附近的锚点,也可以完全依赖于你的智能手机。随着室内定位系统需求的快速增长和急剧增加,许多研究人员试图发明新的算法来开发室内定位系统。本文提出了基于蓝牙的室内定位算法。RSSI和WLAN等射频特征RSSI指纹识别系统通常由两个阶段组成,第一阶段是离线阶段,第二阶段是在线阶段。指纹系统处理离线和在线数据,并估计用户的位置。我们的算法设计是加权k近邻(WKNN)和卡尔曼滤波算法的集合。最后,为了避免IPS算法的问题,获得更好的精度,我们提出了加权k近邻粒子滤波(WKNNPF)和加权k近邻扩展卡尔曼滤波(WKNNEKF)两种算法,并与KNN和WKNN的结果进行了比较。经过比较,我们发现WKNNPF和WKNNEKF的结果优于KNN和WKNN。WKNN的3M概率约为79%,WKNNEKF约为89%,WKNNPF约为95.1%。其中WKNNPF算法的精度为1.7 ~ 2m,响应时间为42.2m/s,优于WKNNEKF算法。
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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