Improved KNN Algorithm with Historical Information Fusion for Indoor Positioning

Hui Zhang, Zhikun Wang, Yiyang Ni, Wenchao Xia, Haitao Zhao
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引用次数: 2

Abstract

More diverse applications and services pose a high demand for tracking services in indoor environments to improve user experience. Different from other positioning methods, the trajectory-based positioning system utilizes abundant historical information to further improve positioning accuracy. To better utilize historical information, we propose a novel historical information fusion method based on trajectory for indoor localization. Specifically, we first evaluate the distances between the reference points (RPs) and the previous position to match proper RPs. Then, a fusion weight is calculated according to the previous position and the change tendency of received signal strength. Based on the fusion weight, the position of target node can be determined. Finally, experiments are conducted and simulation results show that the positioning accuracy is improved significantly by the proposed algorithm.
基于历史信息融合的室内定位改进KNN算法
越来越多样化的应用和服务对室内环境的跟踪服务提出了更高的要求,以改善用户体验。与其他定位方法不同,基于轨迹的定位系统利用了丰富的历史信息,进一步提高了定位精度。为了更好地利用历史信息,提出了一种基于轨迹的历史信息融合方法用于室内定位。具体来说,我们首先评估参考点(RPs)与先前位置之间的距离,以匹配合适的RPs。然后,根据前一位置和接收信号强度的变化趋势计算融合权值;根据融合权值确定目标节点的位置。最后进行了实验和仿真,结果表明该算法显著提高了定位精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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