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An Online Radio Map Update Scheme for WiFi Fingerprint-Based Localization

机译:基于WiFi指纹的本地无线电地图更新方案

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摘要

Fingerprint-based localization relies on an accurate and up-to-date radio map, which is however cumbersome to obtain. In this paper, a novel scheme is proposed to online adapt radio maps to environmental dynamics by using low-cost crowdsourced received signal strength (RSS) measurements. To be specific, a coarse-grained radio map is initially established in the offline phase utilizing the standard Gaussian process regression (GPR) given a limited number of fingerprints (i.e., RSS measurements with location labels), and further can be recursively refined in the online phase given crowdsourced RSS measurements with their noisy location labels obtained through the existing radio map. Differently from existing GPR-based approaches, the proposed scheme adopts extended GPR to alleviate the model inaccuracy induced by such noisy location labels, and then presents a marginalized particle extended Gaussian process (MPEG) to recursively filter the radio map. In addition, pedestrian dead reckoning (PDR) is leveraged to calibrate such noisy location labels. Extensive experiments are carried out in a real scenario with area of nearly 1000 m(2) during a five-month period of time, and a thorough comparison with several existing approaches indicates that the proposed scheme gradually improves the localization accuracy on average by as much as 31.2%, while the counterparts result in fluctuant localization performance and improve the localization accuracy on average by 13.3%.
机译:基于指纹的定位依赖于准确且最新的无线电地图,但是这很麻烦。在本文中,提出了一种新颖的方案,该方案通过使用低成本的众包接收信号强度(RSS)测量来在线使无线电地图适应环境动态。具体而言,首先在离线阶段使用有限的指纹数量(即带有位置标签的RSS测量)使用标准的高斯过程回归(GPR)在离线阶段建立粗粒度的无线电图,并进一步在地图中进行递归优化。在线阶段,通过众包的RSS测量以及通过现有无线电地图获得的嘈杂的位置标签来实现。与现有的基于GPR的方法不同,所提出的方案采用扩展的GPR来缓解由这种嘈杂的位置标签引起的模型不准确性,然后提出边缘化的粒子扩展高斯过程(MPEG)递归过滤无线电地图。另外,行人航位推算(PDR)被用来校准此类嘈杂的位置标签。在五个月的时间里,在接近1000 m(2)的实际场景中进行了广泛的实验,与现有的几种方法进行了全面的比较,表明所提出的方案逐渐平均提高了定位精度占31.2%,而相应的定位结果则波动不定,平均定位精度提高了13.3%。

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