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Smallest enclosing circle-based fingerprint clustering and modified-WKNN matching algorithm for indoor positioning

机译:基于最小包围圈的指纹聚类和改进的WKNN匹配算法的室内定位

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Methods to cluster fingerprints based on Smallest-Enclosing-Circle (SEC) and to modify Weighted-K-Nearest-Neighbor (WKNN) matching algorithm for indoor fingerprint positioning system are proposed. Based on the approach to computing the smallest k-enclosing circle, the method proposed clusters fingerprints in database by introducing reference points' coordinates, instead of their received signal strength (RSS). This approach performs higher accuracy of positioning areas compared to conventional clustering algorithms, which are based on RSS. Meanwhile, this paper analyses the transmission characteristics of wireless signals in dense cluttered environments, and derives a novel path-loss-model-based weight computational method for WKNN matching algorithm. A modified-WKNN (M-WKNN) matching algorithm for indoor fingerprint positioning system is proposed and experiments are implemented in China National Grand Theatre. Results show that the location area accuracy using the proposed clustering algorithm is improved by 30% compared to that using K-means algorithm, and the positioning accuracy of M-WKNN is 11.9% and 29.1% higher than that of WKNN and KNN, respectively.
机译:提出了一种基于最小封闭圆(SEC)的指纹聚类方法和修改加权K最近邻(WKNN)匹配算法的室内指纹定位系统的方法。该方法基于计算最小的k圆的方法,提出了通过引入参考点的坐标而不是其接收信号强度(RSS)来在数据库中对指纹进行聚类的方法。与传统的基于RSS的聚类算法相比,此方法可实现更高的定位区域精度。同时,本文分析了无线信号在密集杂波环境中的传输特性,并提出了一种基于路径损耗模型的WKNN匹配算法的权重计算方法。提出了一种改进的WKNN(M-WKNN)室内指纹定位系统匹配算法,并在中国国家大剧院进行了实验。结果表明,与使用K-means算法相比,所提聚类算法的定位精度提高了30%,M-WKNN的定位精度分别比WKNN和KNN提高了11.9%和29.1%。

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