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An Optimized Space Partitioning Technique to Support Two-Layer WiFi Fingerprinting

机译:支持两层WiFi指纹的优化空间划分技术

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WiFi fingerprinting has been a common solution to indoor localization, however its accuracy still cannot meet the requirements of high accurate indoor location based services. This paper proposes an optimized space partitioning technique followed by a two-layer WiFi fingerprinting based on SVM classification and regression. The proposed space partitioning technique first applies K-means clustering algorithm to partition the localization area to subregions according to signal similarity of the reference locations. An outlier removal algorithm is then applied to remove the outliers according to physical proximity. To obtain the optimal partitioning, an optimization algorithm is proposed and applied onto the space partitioning technique. Evaluations show that the optimized space partitioning technique outperforms space partitioning with floor plan and SVM-C. Comparison with SVR, NN and KNN shows that the two-layer WiFi fingerprinting with space partitioning outperforms one-layer WiFi fingerprinting and is able to improve the localization accuracy effectively.
机译:WiFi指纹识别已成为室内定位的常见解决方案,但是其准确性仍不能满足基于室内准确定位的高精度服务的要求。本文提出了一种基于SVM分类和回归的优化空间划分技术,然后进行了两层WiFi指纹识别。提出的空间划分技术首先应用K-means聚类算法,根据参考位置的信号相似性将定位区域划分为子区域。然后应用离群值去除算法来根据物理邻近度去除离群值。为了获得最佳分割,提出了一种优化算法,并将其应用于空间分割技术。评估表明,优化的空间划分技术在平面图和SVM-C方面要优于空间划分。与SVR,NN和KNN的比较表明,具有空间划分的两层WiFi指纹识别优于一层WiFi指纹识别,并且可以有效地提高定位精度。

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