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WiFi/PDR-integrated indoor localization using unconstrained smartphones

机译:使用无限制智能手机的WiFi / PDR整合室内定位

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Abstract In this paper, we propose a WiFi/pedestrian dead reckoning (PDR)-integrated localization approach based on unscented Kalman filters (UKF). The UKF integrating WiFi localization with PDR is used for ultimate location estimation. Instead of setting process and measurement noise-related parameters empirically as previous works, the error covariance of user heading estimation in PDR state model can be accurately estimated by developing another UKF, while the measurement noise statistics in WiFi localization are estimated by deploying a kernel density estimation-based model. Another developed UKF is used for device attitude tracking in user heading estimation of PDR. Besides, in order to adapt the unconstrained carrying positions and orientations of smartphones, we propose a robust carrying position recognition method based on orientation invariant features. Experimental results show that the proposed WiFi/PDR-integrated localization approach may improve traditional approaches in terms of reliability and localization accuracy.
机译:摘要在本文中,我们提出了一种基于Uncented Kalman滤波器(UKF)的WiFi /行人死亡(PDR) - 集成定位方法。将WiFi本地化与PDR集成的UKF用于最终的位置估计。代替将过程和测量噪声相关参数以先前的作品设置,而是通过开发另一个UKF来准确地估计PDR状态模型中用户页面估计的误差协方差,而通过部署内核密度估计WiFi定位中的测量噪声统计信息基于估计的模型。另一个发达的UKF用于PDR的用户航向估计中的设备姿态跟踪。此外,为了适应智能手机的无约束携带位置和方向,我们提出了一种基于方向不变特征的强大携带位置识别方法。实验结果表明,拟议的WiFi / PDR集成的本地化方法可以在可靠性和定位精度方面提高传统方法。

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