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Received Signal Strength Based Indoor Localization using ISODATA and MK-ELM Technique

机译:使用ISODATA和MK-ELM技术接收基于信号强度的室内定位

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With the development of the smart city, indoor localization has received much attentions. In this paper, a novel received signal strength (RSS) based fingerprint localization algorithm was proposed by utilizing iterative self-organizing data analysis techniques algorithm (ISODATA) and multiple kernel extreme learning machine (MK-ELM) technique. In the offline phase, the measurement label of each RSS measurement training data is given after using ISODATA clustering. And then the measurement-label training set and the measurement-position training subsets can be formed. Next, using the MK-ELM algorithm, the measurement classification function and the position regression sub-function can be learned by the measurement-label training set, measurement-position training subset respectively. In the online phase, the classification result of the obtained RSS measurements is obtained firstly. Then the corresponding regression function is chosen for the final position estimation. The experimental results illustrated its performance with respect to position estimation and computational complexity.
机译:随着智能城市的发展,室内本地化得到了很多关注。本文通过利用迭代自组织数据分析技术算法(ISODATA)和多内核极端学习机(MK-ELM)技术,提出了一种基于新的接收信号强度(RSS)的指纹定位算法。在离线阶段,在使用ISOData群集后,给出了每个RS测量训练数据的测量标签。然后可以形成测量标签训练集和测量位置训练子集。接下来,使用MK-ELM算法,可以通过测量标签训练集,测量位置训练子集学习测量分类函数和位置回归子功能。在在线阶段,首先获得所获得的RSS测量的分类结果。然后选择相应的回归函数用于最终位置估计。实验结果说明了其对位置估计和计算复杂性的性能。

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