Li Pan, Guan Runyu, Chen Bing, Xu Shaojian, Xiao Danli, Xu Luping, Yan Bo
School of Aerospace Science and Technology, Xidian University, Xi'an 710126, China.
Laboratory of Transport Safety and Emergency Technology, Transport Planning and Research Institute, Beijing 100029, China.
Sensors (Basel). 2024 Oct 9;24(19):6492. doi: 10.3390/s24196492.
Bluetooth devices have been widely used for pedestrian positioning and navigation in complex indoor scenes. Bluetooth beacons are scattered throughout the entire indoor walkable area containing stairwells, and pedestrian positioning can be obtained by the received Bluetooth packets. However, the positioning performance is sharply deteriorated by the multipath effects originating from indoor clutter and walls. In this work, an ultra-wideband (UWB)-assisted Bluetooth acquisition of signal strength value method is proposed for the construction of a Bluetooth fingerprint library, and a multi-frame fusion particle filtering approach is proposed for indoor pedestrian localization for online matching. First, a polynomial regression model is developed to fit the relationship between signal strength and location. Then, particle filtering is utilized to continuously update the hypothetical location and combine the data from multiple frames before and after to attenuate the interference generated by the multipath. Finally, the position corresponding to the maximum likelihood probability of the multi-frame signal is used to obtain a more accurate position estimation with an average error as low as 70 cm.
蓝牙设备已广泛应用于复杂室内场景中的行人定位与导航。蓝牙信标散布在包含楼梯间的整个室内可通行区域,通过接收到的蓝牙数据包可实现行人定位。然而,源自室内杂物和墙壁的多径效应会使定位性能急剧下降。在这项工作中,提出了一种用于构建蓝牙指纹库的超宽带(UWB)辅助蓝牙信号强度值获取方法,并提出了一种用于在线匹配的室内行人定位的多帧融合粒子滤波方法。首先,建立多项式回归模型以拟合信号强度与位置之间的关系。然后,利用粒子滤波不断更新假设位置,并结合前后多帧的数据以减弱多径产生的干扰。最后,使用多帧信号最大似然概率对应的位置来获得更精确的位置估计,平均误差低至70厘米。