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An Adaptive Weighted KNN Positioning Method Based on Omnidirectional Fingerprint Database and Twice Affinity Propagation Clustering

机译:基于全向指纹数据库和两次亲和传播聚类的自适应加权KNN定位方法

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摘要

The human body has a great influence on Wi-Fi signal power. A fixed K value leads to localization errors for the K-nearest neighbor (KNN) algorithm. To address these problems, we present an adaptive weighted KNN positioning method based on an omnidirectional fingerprint database (ODFD) and twice affinity propagation clustering. Firstly, an OFPD is proposed to alleviate body’s sheltering impact on signal, which includes position, orientation and the sequence of mean received signal strength (RSS) at each reference point (RP). Secondly, affinity propagation clustering (APC) algorithm is introduced on the offline stage based on the fusion of signal-domain distance and position-domain distance. Finally, adaptive weighted KNN algorithm based on APC is proposed for estimating user’s position during online stage. K initial RPs can be obtained by KNN, then they are clustered by APC algorithm based on their position-domain distances. The most probable sub-cluster is reserved by the comparison of RPs’ number and signal-domain distance between sub-cluster center and the online RSS readings. The weighted average coordinates in the remaining sub-cluster can be estimated. We have implemented the proposed method with the mean error of 2.2 m, the root mean square error of 1.5 m. Experimental results show that our proposed method outperforms traditional fingerprinting methods.
机译:人体对Wi-Fi信号功率有很大的影响。固定的K值会导致K最近邻(KNN)算法的定位错误。为了解决这些问题,我们提出了一种基于全向指纹数据库(ODFD)和两次亲和力传播聚类的自适应加权KNN定位方法。首先,提出了OFPD以减轻人体对信号的遮挡影响,包括位置,方向和每个参考点(RP)的平均接收信号强度(RSS)的序列。其次,基于信号域距离和位置域距离的融合,在离线阶段引入了亲和传播聚类算法。最后,提出了一种基于APC的自适应加权KNN算法,用于估计用户在线阶段的位置。可以通过KNN获得K个初始RP,然后根据它们的位置域距离通过APC算法进行聚类。通过比较子群集中心和在线RSS读数之间RP的数量和信号域距离,可以保留最可能的子群集。可以估计剩余子集群中的加权平均坐标。我们已经实现了所提出的方法,其平均误差为2.2 m,均方根误差为1.5 m。实验结果表明,本文提出的方法优于传统的指纹识别方法。

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