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An F-Score-Weighted Indoor Positioning Algorithm Integrating WiFi and Magnetic Field Fingerprints

机译:结合WiFi和磁场指纹的F分值加权室内定位算法

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Indoor positioning systems have attracted much attention with the recent development of location-based services. Although global positioning system (GPS) is a widely accepted and accurate outdoor localization system, there is no such a solution for indoor areas. Therefore, various systems are proposed for the indoor positioning problem. Fingerprint-based positioning is one of the widely used methods in this area. WiFi-received signal strength (RSS) is a frequently used signal type for the fingerprint-based positioning system. Since WiFi signal distribution is nonstationary, accuracy is insufficient. Therefore, the performance of indoor positioning systems can be enhanced using multiple signal types. However, the positioning performance of each signal type varies depending on the characteristics of the environment. Considering the variability of the performances of different signal types, an F-score-weighted indoor positioning algorithm, which integrates WiFi-RSS and MF fingerprints, is proposed in this study. In the proposed approach, the positioning is first performed by maximum likelihood estimation for both WiFi-RSS and magnetic field signal values to calculate the F-score of each signal type. Then, each signal type is combined using F-score values as a weight to estimate a position. The experiments are performed using a publicly available dataset that contains real-world data. Experimental results reveal that the proposed algorithm is efficient in achieving accurate indoor positioning and consolidates the system performance compared to using a single type of signal.
机译:随着基于位置的服务的最新发展,室内定位系统引起了人们的极大关注。尽管全球定位系统(GPS)是一种广为接受且精确的室外定位系统,但对于室内区域却没有这样的解决方案。因此,针对室内定位问题提出了各种系统。基于指纹的定位是该领域中广泛使用的方法之一。 WiFi接收信号强度(RSS)是基于指纹的定位系统的一种常用信号类型。由于WiFi信号分配不稳定,因此准确性不足。因此,可以使用多种信号类型来增强室内定位系统的性能。但是,每种信号类型的定位性能都取决于环境的特征。考虑到不同信号类型的性能差异,提出了一种融合了WiFi-RSS和MF指纹的F分数加权室内定位算法。在提出的方法中,首先通过对WiFi-RSS和磁场信号值进行最大似然估计来执行定位,以计算每种信号类型的F得分。然后,使用F分数作为权重组合每种信号类型,以估计位置。使用包含实际数据的公共可用数据集执行实验。实验结果表明,与使用单一类型的信号相比,该算法可有效实现精确的室内定位并巩固系统性能。

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