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An indoor positioning algorithm based on geometry and RSS clustering

机译:基于几何和RSS聚类的室内定位算法

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With the WiFi becoming more and more popular over the last few years, the study on the technology of indoor positioning based on WiFi is given more and more attention. Being specific to the problem that not all the clustered reference points(RPs) of the traditional clustering algorithm have geometric proximity in indoor positioning, this paper puts forward the affinity propagation presentation(AP) which bases on the combination of geometry and received signal strength (RSS). Being different from the traditional clustering algorithm, this kind of algorithm can endow the RPs with geometrical and endow the RSS with corresponding weight according to the positioning conditions, it can use the features of the geometry and RSS to restrain the sort of RPs, and that can make the sort of RPs more reasonable. After that it will use k-Nearest Neighbor Algorithm(KNN) to have accurate positioning, which not only can reduce the calculation, but also improve the localization accuracy. Simulation shows that, this kind of algorithm possesses the advantage of fast location and higher localization accuracy.
机译:随着WiFi在过去几年中越来越流行,基于WiFi的室内定位技术的研究受到越来越多的关注。针对传统聚类算法中并非所有聚类参考点在室内定位中都具有几何接近性这一问题,本文提出了一种基于几何和接收信号强度相结合的亲和传播表示(AP)。 RSS)。与传统的聚类算法不同,这种算法可以给RPs赋予几何形状,并根据定位条件赋予RSS相应的权重,可以利用几何形状和RSS的特征来约束RPs的种类。可以使RP的类型更加合理。之后采用k最近邻算法进行精确定位,不仅可以减少计算量,而且可以提高定位精度。仿真表明,这种算法具有定位快,定位精度高的优点。

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