基于众源的高斯过程信号强度场估计

Irene Santos, P. Djurić
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引用次数: 2

摘要

我们解决了从低精度测量中估计信号强度的空间场的问题。这些测量值是由位置估计不准确的用户获得的。空间场是在已知位置的节点网格上定义的。用户报告他们的位置和接收到的信号强度到一个中央装置,在那里所有的测量都被处理。对测量值进行处理后,对估计的信号强度空间场进行更新。我们使用包含未知路径损耗指数的信号传播模型。此外,我们的模型考虑了报告用户的不准确位置。在本文中,我们采用基于高斯过程的贝叶斯方法进行众包。与只提供点估计的方法不同,这种方法可以得到空间场的完整联合分布。通过计算机仿真验证了该方法的性能,并与其他方法的性能进行了比较。结果表明,我们的方法优于其他方法。
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Crowdsource-based signal strength field estimation by Gaussian processes
We address the problem of estimating a spatial field of signal strength from measurements of low accuracy. The measurements are obtained by users whose locations are inaccurately estimated. The spatial field is defined on a grid of nodes with known locations. The users report their locations and received signal strength to a central unit where all the measurements are processed. After the processing of the measurements, the estimated spatial field of signal strength is updated. We use a propagation model of the signal that includes an unknown path loss exponent. Furthermore, our model takes into account the inaccurate locations of the reporting users. In this paper, we employ a Bayesian approach for crowdsourcing that is based on Gaussian Processes. Unlike methods that provide only point estimates, with this approach we get the complete joint distribution of the spatial field. We demonstrate the performance of our method and compare it with the performance of some other methods by computer simulations. The results show that our approach outperforms the other approaches.
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