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CSI Phase Fingerprinting for Indoor Localization With a Deep Learning Approach

机译:使用深度学习方法进行室内定位的CSI相位指纹

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With the increasing demand of location-based services, indoor localization based on fingerprinting has become an increasingly important technique due to its high accuracy and low hardware requirement. In this paper, we propose PhaseFi, a fingerprinting system for indoor localization with calibrated channel state information (CSI) phase information. In PhaseFi, the raw phase information is first extracted from the multiple antennas and multiple subcarriers of the IEEE 802.11n network interface card by accessing the modified device driver. Then a linear transformation is applied to extract the calibrated phase information, which we prove to have a bounded variance. For the offline stage, we design a deep network with three hidden layers to train the calibrated phase data, and employ the weights of the deep network to represent fingerprints. A greedy learning algorithm is incorporated to train the weights layer-by-layer to reduce computational complexity, where a subnetwork between two consecutive layers forms a restricted Boltzmann machine. In the online stage, we use a probabilistic method based on the radial basis function for online location estimation. The proposed PhaseFi scheme is implemented and validated with extensive experiments in two representation indoor environments. It is shown to outperform three benchmark schemes based on CSI or received signal strength in both scenarios.
机译:随着基于位置的服务的需求的增长,基于指纹的室内定位由于其高精度和低硬件需求而变得越来越重要。在本文中,我们提出了PhaseFi,一种用于室内本地化的指纹系统,具有已校准的信道状态信息(CSI)相位信息。在PhaseFi中,首先通过访问修改后的设备驱动程序从IEEE 802.11n网络接口卡的多个天线和多个子载波中提取原始相位信息。然后应用线性变换来提取校准的相位信息,我们证明它具有有限的方差。对于离线阶段,我们设计了一个具有三个隐藏层的深度网络来训练已校准的相位数据,并利用该深度网络的权重来表示指纹。集成了贪婪学习算法以逐层训练权重以降低计算复杂性,其中两个连续层之间的子网形成受限的Boltzmann机器。在在线阶段,我们使用基于径向基函数的概率方法进行在线位置估计。所提出的PhaseFi方案在两个代表性的室内环境中进行了广泛的实验,并得到了验证。在两种情况下,它均优于基于CSI或接收信号强度的三种基准方案。

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