基于众包的带噪声位置标签无线地图构建研究

Baoqi Huang, Jian Song, Bing Jia, Long Zhao
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引用次数: 0

摘要

为了减少构建密集射电图的开销和防止精度下降,人们开发了各种基于众包的方法来自动收集WiFi RSS测量值以构建射电图。不同于以往的众包技术研究,本文研究了如何在受噪声位置标签影响的众包RSS测量的基础上高效、准确地生成无线电地图。在文献中,通常采用高斯过程回归(GPR)来构建无线电地图,充分利用附近位置接收到的信号强度(RSS)测量值之间的空间相关性。然而,标准GPR没有考虑到附加在众包RSS测量上的位置标签的不确定性,从而降低了依赖于相应无线电地图的定位系统的性能。因此,对标准GPR进行了扩展,以减轻噪声定位标签的影响。基于实际RSS测量进行了实验,验证了该方法的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the crowdsourcing-based radio map construction with noisy location labels
In order to reduce the overheads of constructing a dense radio map as well as to prevent the accuracy degradation, various crowdsourcing-based methods have been developed to automatically collect WiFi RSS measurements to build the radio map. Unlike existing studies focusing on crowdsourcing techniques, this paper deals with how to efficiently and accurately produce the radio map based on crowdsourcing RSS measurements which suffer from noisy location labels. In the literature, gaussian process regression (GPR) is commonly adopted to construct radio maps by sufficiently making use of the spatial correlation among received signal strength (RSS) measurements at nearby locations. However, the standard GPR does not take into account the uncertainties in the location labels attached to the crowdsourcing RSS measurements, which consequently deteriorates the performance of localization systems relying on the corresponding radio maps. Hence, the standard GPR is extended to mitigate the influences of noisy location labels. Experiments are carried out based on practical RSS measurements, and confirm the feasibility and superiority of the proposed method.
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