A Data Fusion Method of Indoor Location Based on Adaptive UKF

Shouhua Wang, Dingmei Hu, Xiyan Sun, Suqing Yan, Jianhua Huang, Weimin Zhen, Yunke Li
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引用次数: 4

Abstract

Focus on the problem that indoor location accuracy is generally low and various indoor location technologies are not widely used because some factors such as cost and accuracy. A data fusion method based on adaptive unscented Kalman filter (UKF) indoor location is proposed by analyzing the limitations of signal strength value (RSSI) fingerprint location, geomagnetic localization and inertial navigation location. The algorithm uses six-position error calibration method and Kalman filter to compensate the MEMS-SINS data, and establishes the correlation between location data and RSSI/geomagnetic data based on feature sorting vector fingerprint matching method. Finally, it is proposed to combine the adaptive factor with the unscented Kalman filter for data fusion, which improves the data stability and indoor location accuracy. The experimental results show that the adaptive UKF data fusion using MEMS-SINS/RSSI/geomagnetic data in the indoor environment can combine various advantages and achieve high-precision indoor location with an average absolute position error of 0.563m under the premise of low cost.
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基于自适应UKF的室内定位数据融合方法
关注室内定位精度普遍较低,各种室内定位技术由于成本、精度等因素没有得到广泛应用的问题。分析了信号强度值(RSSI)指纹定位、地磁定位和惯性导航定位的局限性,提出了一种基于自适应无气味卡尔曼滤波(UKF)室内定位的数据融合方法。该算法采用六位置误差标定方法和卡尔曼滤波对MEMS-SINS数据进行补偿,并基于特征排序向量指纹匹配方法建立位置数据与RSSI/地磁数据的相关性。最后,提出将自适应因子与无气味卡尔曼滤波相结合进行数据融合,提高了数据的稳定性和室内定位精度。实验结果表明,利用MEMS-SINS/RSSI/地磁数据在室内环境下进行自适应UKF数据融合,可以综合多种优势,在低成本的前提下实现平均绝对位置误差0.563m的高精度室内定位。
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