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Research on improved indoor positioning algorithm based on WiFi–pedestrian dead reckoning

机译:基于WiFi行人航位推算的改进室内定位算法研究

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In order to improve the positioning accuracy and reduce the impact of indoor complex environment on WiFi positioning results, an improved fusion positioning algorithm based on WiFi–pedestrian dead reckoning is proposed. The algorithm uses extended Kalman filter as the fusion positioning filter of WiFi–pedestrian dead reckoning. Aiming at the problem of WiFi signal strength fluctuation, Bayesian estimation matching algorithm based on K -nearest neighbor is proposed to reduce the impact of the dramatic change of received signal strength indicator value on the positioning result effectively. For the cumulative error problem in pedestrian dead reckoning positioning algorithm, a post-correction module is used to reduce the error. The experimental results show that the algorithm can improve the shortcomings of these two algorithms and control the positioning accuracy within 1.68?m.
机译:为了提高定位精度,减少室内复杂环境对WiFi定位结果的影响,提出了一种改进的基于WiFi行人航位推算的融合定位算法。该算法使用扩展的卡尔曼滤波器作为WiFi行人航位推算的融合定位滤波器。针对WiFi信号强度波动的问题,提出了一种基于K近邻的贝叶斯估计匹配算法,以有效降低接收信号强度指标值的急剧变化对定位结果的影响。对于行人航位推算定位算法中的累积误差问题,采用后校正模块减小误差。实验结果表明,该算法可以改善这两种算法的缺点,并将定位精度控制在1.68?m以内。

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