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Comparative Statistical Analysis of New Adaptive Filtering Techniques for Precise Indoor Local Positioning

机译:精确的室内局部定位的新自适应滤波技术的比较统计分析

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This paper compares two different recursive tracking techniques for precisely localizing a mobile vehicle in an indoor harsh industrial environment. An Extended Kalman Filter (EKF) and Unscented Kalman Filter (UKF), the corresponding algorithms and mathematical models are presented and analysed. Experimental range measurements generated from local positioning radar system are used to test the performance of these algorithms with respect to position and velocity root mean square errors. True and estimated trajectories of the mobile vehicle with associated means and error covariances are illustrated with the number of samples required in each case. Results obtained show that UKF outer performs EKF with respect to positioning accuracy and root mean square error. Both filters show comparable computational complexity with more robustness obtained by applying UKF for non linear estimation since there are no linearization errors as in the case of EKF.
机译:本文比较了两种不同的递归跟踪技术,这些技术可在室内恶劣的工业环境中精确定位移动车辆。给出并分析了扩展卡尔曼滤波器(EKF)和无味卡尔曼滤波器(UKF),以及相应的算法和数学模型。从本地定位雷达系统生成的实验范围测量值用于测试这些算法相对于位置和速度均方根误差的性能。带有相关均值和误差协方差的移动车辆的真实轨迹和估计轨迹以及每种情况下所需的样本数进行了说明。获得的结果表明UKF外部在定位精度和均方根误差方面表现出EKF。由于没有像EKF那样的线性化误差,两个滤波器都显示出可比较的计算复杂性,并且通过将UKF应用于非线性估计获得了更高的鲁棒性。

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