School of Geodesy and Geomatics, Wuhan University, Wuhan 430079, China.
Research Center for High Accuracy Location Awareness, Wuhan University, Wuhan 430079, China.
Sensors (Basel). 2019 Sep 9;19(18):3885. doi: 10.3390/s19183885.
The fingerprint method has been widely adopted in Wi-Fi indoor positioning because of its advantage in non-line-of-sight channels between access points (APs) and mobile users. However, the received signal strength (RSS) during the fingerprint positioning process generally varies due to the dissimilar hardware configurations of heterogeneous smartphones. This difference may degrade the accuracy of fingerprint matching between fingerprint and test data. Thus, this paper puts forward a fingerprint method based on grey relational analysis (GRA) to approach the challenge of heterogeneous smartphones and to improve positioning accuracy. Initially, the grey relational coefficient (GRC) between the RSS comparability sequence of each reference point (RP) and the RSS reference sequence of the test point (TP) is calculated. Subsequently, the grey relational degree (GRD) between each RP and TP is determined on the basis of GRC, and the K most relational RPs are selected in accordance with the value of GRD. Finally, the user location is determined by weighting the K most relational RPs that correspond to the coordinates. The main advantage of this GRA method is that it does not require device calibration when handling heterogeneous smartphone problems. We further carry out extensive experiments using heterogeneous Android smartphones in an office environment to verify the positioning performance of the proposed method. Experimental results indicate that the proposed method outperforms the existing ones no matter whether heterogeneous smartphones are used.
指纹方法由于在接入点(AP)和移动用户之间的非视距信道中具有优势,因此已被广泛应用于 Wi-Fi 室内定位。然而,在指纹定位过程中,由于异构智能手机的硬件配置不同,接收信号强度(RSS)通常会有所不同。这种差异可能会降低指纹与测试数据之间的匹配准确性。因此,本文提出了一种基于灰色关联分析(GRA)的指纹方法来解决异构智能手机的挑战,以提高定位精度。首先,计算每个参考点(RP)的 RSS 可比性序列与测试点(TP)的 RSS 参考序列之间的灰色关联系数(GRC)。然后,根据 GRC 确定每个 RP 和 TP 之间的灰色关联度(GRD),并根据 GRD 值选择 K 个最相关的 RP。最后,通过加权对应坐标的 K 个最相关的 RP 来确定用户位置。这种 GRA 方法的主要优点是,在处理异构智能手机问题时不需要设备校准。我们在办公室环境中使用异构 Android 智能手机进行了广泛的实验,以验证所提出方法的定位性能。实验结果表明,无论是否使用异构智能手机,所提出的方法都优于现有方法。