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An Improved CSI Based Device Free Indoor Localization Using Machine Learning Based Classification Approach

机译:基于机器学习的分类方法改进了基于CSI的装置免费室内定位

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Indoor positioning system (IPS) has shown great potentials with the growth of context-aware computing. Typical IPS requires the tracked subject to carry a physical device. In this study, we present MaLDIP, a novel, machine learning based, device free technique for indoor positioning. To design the device free setting, we exploited the Channel State Information (CSI) obtained from Multiple Input Multiple Output Orthogonal Frequency-Division Multiplexing (MIMO-OFDM). The system works by utilizing frequency diversity and spatial diversity properties of CSI at target location by correlating the impact of human presence to certain changes on the received signal features. However, accurate modeling of the effect of a subject on fine grained CSI is challenging due to the presence of multipaths. We propose a novel subcarrier selection method to remove the multipath affected subcarriers to improve the performance of localization. We select the most location-dependent features from channel response based upon the wireless propagation model and propose to apply a machine learning based approach for location estimation, where the localization problem is shifted to a cell identification problem using the Support Vector Machine (SVM) based classifier. Experimental results show that MaLDIP can estimate location in a passive device free setting with a high accuracy using MIMO-OFDM system.
机译:室内定位系统(IPS)显示了与上下文知识计算的增长的巨大潜力。典型的IPS需要跟踪的主题携带物理设备。在这项研究中,我们展示了Maldip,一种基于机器学习的,设备免费技术,用于室内定位。要设计设备自由设置,我们利用了从多个输入多输出正交频分复用(MIMO-OFDM)获得的信道状态信息(CSI)。通过将人类存在的影响与所接收信号特征的某些改变的影响相关联,通过在目标位置利用CSI的频率分集和空间分集特性来工作。然而,由于多径存在,精确建模对象对细粒度CSI的效果是挑战性的。我们提出了一种新颖的子载波选择方法来删除多径影响的子载波以提高本地化的性能。我们基于无线传播模型选择来自信道响应的最大位置依赖性功能,并建议应用基于机器的基于机器学习的位置估计,其中定位问题使用基于支持向量机(SVM)的单元格识别问题。分类器。实验结果表明,Maldip可以使用MIMO-OFDM系统具有高精度的无源器件自由设置中的位置。

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