Multiple Classifiers Global Dynamic Fusion Location System based on WiFi and Geomagnetism

Feng-yan Xu, Linfu Duan, Xiansheng Guo, Lin Li, F. Hu
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引用次数: 5

Abstract

The existing WiFi and geomagnetism based positioning methods using single classifier show low accuracy because they are sensitive to changing environments. In this paper, we propose a global dynamic fusion location algorithm for multiple classifiers based on WiFi and geomagnetic fingerprints. In the offline phase, we first divide a positioning environment into some grid points and construct RSS and geomagnetic fingerprints for each grid point. Then, we train multiple classifiers by using the constructed fingerprints. Second, we derive a global dynamic fusion weight training method for each grid point through the global supervised optimization learning. In the online phase, given an RSS testing sample, we select the matching weights for fusion by using K-nearest neighbor (KNN). Our proposed multiple classifiers global dynamic fusion algorithm can make full use of the intrinsic complementarity of multiple classifiers, thus effectively improving the positioning accuracy of RSS and geomagnetic fingerprints. Experimental results show that the proposed algorithm outperforms some existing methods in complex indoor environments.
基于WiFi和地磁的多分类器全球动态融合定位系统
现有的基于WiFi和地磁的单分类器定位方法对环境变化敏感,精度较低。本文提出了一种基于WiFi和地磁指纹的多分类器全局动态融合定位算法。在离线阶段,我们首先将定位环境划分为若干网格点,并为每个网格点构建RSS和地磁指纹;然后,我们利用构造的指纹训练多个分类器。其次,通过全局监督优化学习,推导出每个网格点的全局动态融合权值训练方法;在在线阶段,给定一个RSS测试样本,我们使用k -最近邻(KNN)选择匹配权值进行融合。我们提出的多分类器全局动态融合算法可以充分利用多分类器的内在互补性,从而有效提高RSS和地磁指纹的定位精度。实验结果表明,该算法在复杂的室内环境中优于现有的一些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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