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A New Weighted Indoor Positioning Algorithm Based On the Physical Distance and Clustering

机译:基于物理距离和聚类的加权室内定位新算法

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The weighted K-nearest neighbor (WKNN) algorithm is one of the most frequently used algorithms for indoor positioning. However, the traditional WKNN algorithm select the k points only based on their received signal strength (RSS), and the algorithm weights the reference points' coordinates by the RSS, which is not accurate enough because of the exponential relationship between RSS and physical distance. Therefore, in order to improve the positioning accuracy of the traditional location algorithm, this paper proposes a new algorithm based on clustering and the physical distance of the RSS. Experiments were conducted in an office building and results demonstrate that the proposed algorithm is better than a series of indoor positioning algorithm. This proposed algorithm is based on the WKNN algorithm and the Kmeans algorithm.
机译:加权K最近邻算法(WKNN)是室内定位最常用的算法之一。然而,传统的WKNN算法仅根据k个点的接收信号强度(RSS)来选择k个点,并且该算法通过RSS对参考点的坐标进行加权,由于RSS与物理距离之间呈指数关系,因此不够准确。因此,为提高传统定位算法的定位精度,本文提出了一种基于聚类和RSS物理距离的新算法。在办公楼中进行了实验,结果表明该算法优于一系列室内定位算法。该算法基于WKNN算法和Kmeans算法。

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