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Continuous Indoor Positioning Fusing WiFi Smartphone Sensors and Landmarks

机译:连续室内定位融合WiFi智能手机传感器和地标

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摘要

To exploit the complementary strengths of WiFi positioning, pedestrian dead reckoning (PDR), and landmarks, we propose a novel fusion approach based on an extended Kalman filter (EKF). For WiFi positioning, unlike previous fusion approaches setting measurement noise parameters empirically, we deploy a kernel density estimation-based model to adaptively measure the related measurement noise statistics. Furthermore, a trusted area of WiFi positioning defined by fusion results of previous step and WiFi signal outlier detection are exploited to reduce computational cost and improve WiFi positioning accuracy. For PDR, we integrate a gyroscope, an accelerometer, and a magnetometer to determine the user heading based on another EKF model. To reduce accumulation error of PDR and enable continuous indoor positioning, not only the positioning results but also the heading estimations are recalibrated by indoor landmarks. Experimental results in a realistic indoor environment show that the proposed fusion approach achieves substantial positioning accuracy improvement than individual positioning approaches including PDR and WiFi positioning.
机译:为了利用WiFi定位,行人航位推测(PDR)和地标的互补优势,我们提出了一种基于扩展卡尔曼滤波器(EKF)的新颖融合方法。对于WiFi定位,与以往的融合方法凭经验设置测量噪声参数不同,我们部署了基于核密度估计的模型来自适应地测量相关的测量噪声统计信息。此外,利用由上一步的融合结果和WiFi信号离群值检测定义的WiFi定位的受信任区域来减少计算成本并提高WiFi定位精度。对于PDR,我们集成了陀螺仪,加速度计和磁力计,以根据另一个EKF模型确定用户航向。为了减少PDR的累积误差并实现连续的室内定位,不仅要通过室内界标重新定位结果,而且还要对航向估计进行重新校准。在真实的室内环境中进行的实验结果表明,与包括PDR和WiFi定位的单个定位方法相比,所提出的融合方法可大幅提高定位精度。

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