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A passive WiFi source localization system based on fine-grained power-based trilateration

机译:基于基于功率的细粒度三边测量的无源WiFi源定位系统

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Indoor localization systems become more interesting for researchers because of the attractiveness of business cases in various application fields. A WiFi-based passive localization system can provide user location information to third-party providers of positioning services. However, indoor localization techniques are prone to multipath and Non-Line Of Sight (NLOS) propagation, which lead to significant performance degradation. To overcome these problems, we provide a passive localization system for WiFi targets with several improved algorithms for localization. Through Software Defined Radio (SDR) techniques, we extract Channel Impulse Response (CIR) information at the physical layer. CIR is later adopted to mitigate the multipath fading problem. We propose to use a Nonlinear Regression (NLR) method to relate the filtered power information to propagation distances, which significantly improves the ranging accuracy compared to the commonly used log-distance path loss model. To mitigate the influence of ranging errors, a new trilateration algorithm is designed as well by combining Weighted Centroid and Constrained Weighted Least Square (WC-CWLS) algorithms. Experiment results show that our algorithm is robust against ranging errors and outperforms the linear least square algorithm and weighted centroid algorithm.
机译:由于商业案例在各个应用领域中的吸引力,室内定位系统对于研究人员而言变得越来越有趣。基于WiFi的被动定位系统可以将用户位置信息提供给定位服务的第三方提供商。但是,室内定位技术易于出现多径和非视线(NLOS)传播,这会导致性能显着下降。为了克服这些问题,我们提供了一种针对WiFi目标的被动定位系统,其中包含几种改进的定位算法。通过软件定义无线电(SDR)技术,我们在物理层提取了信道冲激响应(CIR)信息。后来采用CIR来减轻多径衰落问题。我们建议使用非线性回归(NLR)方法将滤波后的功率信息与传播距离相关联,与常用的对数距离路径损耗模型相比,这可以显着提高测距精度。为了减轻测距误差的影响,还通过结合加权质心和约束加权最小二乘法(WC-CWLS)设计了一种新的三边测量算法。实验结果表明,该算法对测距误差具有鲁棒性,优于线性最小二乘算法和加权质心算法。

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