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A Bayesian Density Model Based Radio Signal Fingerprinting Positioning Method for Enhanced Usability

机译:基于贝叶斯密度模型的无线信号指纹定位提高可用性

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Indoor navigation and location-based services increasingly show promising marketing prospects. Indoor positioning based on Wi-Fi radio signal has been studied for more than a decade because Wi-Fi, a signal of opportunity without extra cost, is extensively deployed for internet connections. Bayesian fingerprinting positioning, a classical Wi-Fi-based indoor positioning method, consists of two phases: radio map learning and position inference. Thus far, the application of Bayesian fingerprinting positioning is limited due to its poor usability; radio map learning requires an adequate number of received signal strength indication (RSSI) observables at each reference point, long-term fieldwork, and high development and maintenance costs. In this paper, based on a statistical analysis of actual RSSI observables, a Weibull–Bayesian density model is proposed to represent the probability density of Wi-Fi RSSI observables. The Weibull model, which is parameterized with three parameters that can be calculated with fewer samples, can calculate the probability density with a higher accuracy than the traditional histogram method. Furthermore, the parameterized Weibull model can simplify the radio map by storing only three parameters that can restore the whole probability density, i.e., it is not necessary to store the probability distribution based on traditionally separated RSSI bins. Bayesian positioning inference is performed in the positioning phase using probability density rather than the traditional probability distribution of predefined RSSI bins. The proposed method was implemented on an Android smartphone, and the performance was evaluated in different indoor environments. Results revealed that the proposed method enhanced the usability of Wi-Fi Bayesian fingerprinting positioning by requiring fewer RSSI observables and improved the positioning accuracy by 19–32% in different building environments compared with the classic histogram-based method, even when more samples were used.
机译:室内导航和基于位置的服务越来越显示出广阔的市场前景。对基于Wi-Fi无线电信号的室内定位进行了十多年的研究,因为Wi-Fi是一种机会信号,无需额外费用,已广泛用于互联网连接。贝叶斯指纹定位是一种经典的基于Wi-Fi的室内定位方法,包括两个阶段:无线电地图学习和位置推断。到目前为止,贝叶斯指纹定位的应用由于其易用性而受到限制。无线电地图学习需要在每个参考点观察到足够数量的可接收信号强度指示(RSSI),长期野外工作以及高昂的开发和维护成本。在本文中,基于对实际RSSI观测值的统计分析,提出了Weibull–Bayesian密度模​​型来表示Wi-Fi RSSI观测值的概率密度。使用三个参数进行参数化的Weibull模型可以用更少的样本进行计算,与传统的直方图方法相比,可以以更高的精度计算概率密度。此外,参数化的威布尔模型可通过仅存储可恢复整个概率密度的三个参数来简化无线电图,即,不必基于传统上分离的RSSI仓存储概率分布。贝叶斯定位推断是在定位阶段使用概率密度而不是预定义RSSI bin的传统概率分布执行的。所提出的方法在Android智能手机上实现,并在不同的室内环境下评估了性能。结果表明,与经典的基于直方图的方法相比,即使使用更多的样本,该方法也需要更少的RSSI观测值,从而提高了Wi-Fi贝叶斯指纹定位的可用性,并将定位精度提高了19–32%。 。

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