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Community detection based reference points clustering for indoor localization in WLAN

机译:基于社区检测的参考点聚类,用于WLAN室内定位

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For the indoor positioning issue in WLAN based on fingerprinting, reference points clustering methods such as K-means and affinity propagation are frequently used to reduce the region of search. However, the number of clusters needs to be predefined directly or indirectly, meanwhile an unsuitable clustering pattern would lead to poor estimation accuracy, which reduces the practicability of these methods. Based on the theory of the complex network, this paper presents a community detection based reference points clustering for indoor localization in WLAN. A novel clustering target function is proposed and a modified Clauset-Newman-Moore (CNM) algorithm is presented to solve this function. Experimental results demonstrate that, compared to other clustering based localization methods, the proposed method can obtain more accurate estimation.
机译:对于基于指纹的WLAN中的室内定位问题,经常使用参考点聚类方法(例如K均值和亲和力传播)来缩小搜索范围。然而,需要直接或间接地预定义聚类的数量,同时不合适的聚类模式将导致估计精度较差,这降低了这些方法的实用性。基于复杂网络的理论,本文提出了一种基于社区检测的参考点聚类,用于WLAN的室内定位。提出了一种新颖的聚类目标函数,并提出了一种改进的Clauset-Newman-Moore(CNM)算法来求解该函数。实验结果表明,与其他基于聚类的定位方法相比,该方法可以获得更准确的估计。

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