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CEnsLoc: Infrastructure-Less Indoor Localization Methodology Using GMM Clustering-Based Classification Ensembles

机译:CEnsLoc:使用基于GMM聚类的分类集成减少基础设施的室内本地化方法

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摘要

Indoor localization has continued to garner interest over the last decade or so, due to the fact that its realization remains a challenge. Fingerprinting-based systems are exciting because these embody signal propagation-related information intrinsically as compared to radio propagation models. Wi-Fi (an RF technology) is best suited for indoor localization because it is so widely deployed that literally, no additional infrastructure is required. Since location-based services depend on the fingerprints acquired through the underlying technology, smart mechanisms such as machine learning are increasingly being incorporated to extract intelligible information. We propose CEnsLoc, a new easy to train-and-deploy Wi-Fi localization methodology established on GMM clustering and Random Forest Ensembles (RFEs). Principal component analysis was applied for dimension reduction of raw data. Conducted experimentation demonstrates that it provides 97% accuracy for room prediction. However, artificial neural networks, k-nearest neighbors, K*, FURIA, and DeepLearning4J-based localization solutions provided mean 85%, 91%, 90%, 92%, and 73% accuracy on our collected real-world dataset, respectively. It delivers high room-level accuracy with negligible response time, making it viable and befitted for real-time applications.
机译:在过去的十年左右的时间里,由于室内定位的实现仍然是一个挑战,因此室内定位一直在引起人们的兴趣。基于指纹的系统令人兴奋,因为与无线电传播模型相比,这些系统本质上体现了与信号传播有关的信息。 Wi-Fi(一种射频技术)最适合室内本地化,因为它是如此广泛地部署,以至于不需要额外的基础架构。由于基于位置的服务取决于通过基础技术获取的指纹,因此越来越多地采用诸如机器学习之类的智能机制来提取可理解的信息。我们提出CEnsLoc,这是一种基于GMM群集和随机森林集成(RFE)建立的易于培训和部署的新Wi-Fi本地化方法。主成分分析用于原始数据的降维。进行的实验表明,该方法可为房间预测提供97%的准确性。然而,基于人工神经网络,k近邻,K *,FURIA和DeepLearning4J的本地化解决方案,在我们收集的真实数据集上分别提供了85%,91%,90%,92%和73%的准确度。它提供了高水平的房间精度,而响应时间却可以忽略不计,使其可行并适合于实时应用。

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  • 来源
    《Mobile Information Systems》 |2018年第3期|3287810.1-3287810.11|共11页
  • 作者单位

    Univ Engn & Technol, Dept Comp Sci & Engn, Lahore, Pakistan;

    Univ Engn & Technol, Dept Comp Sci & Engn, Lahore, Pakistan;

    Ajou Univ, Grad Sch, Dept Comp Engn, Suwon, South Korea;

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