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Indoor localization via WLAN path-loss models and Dempster-Shafer combining

机译:通过WLAN路径损耗模型和Dempster-Shafer组合进行室内定位

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In this paper, in order to improve the accuracy of mobile user location estimation, we investigate a new approach based on path-loss algorithms with non-Bayesian data fusion based on Dempster-Shafer Theory (DST). Traditionally, Bayesian framework is used in Wireless Local Area Network (WLAN) positioning. Nevertheless, alternative approaches such as DST have also good potential in WLAN positioning, as it has been previously shown by using DST with WLAN fingerprinting. Our paper focuses on Path-Loss (PL) probabilistic approaches, which have the advantage of a lower number of parameters and lower implementation complexity compared with the fingerprinting approaches. We combine, for the first time in the literature, the PL position estimators with DST. PL approaches can be implemented with a variety of algorithms, and the deconvolution algorithms used in our paper are among the most promising implementations, due to their simplicity. We study the performance of the PL approaches with real-field data measurements and we show that the DST can increase the floor detection probability and decrease the distance Root Mean Square Error (RMSE) compared to the approaches using Bayesian combining.
机译:在本文中,为了提高移动用户位置估计的准确性,我们研究了一种基于路径损失算法与基于Dempster-Shafer理论(DST)的非贝叶斯数据融合的新方法。传统上,贝叶斯框架用于无线局域网(WLAN)定位中。然而,如DST这样的替代方法在WLAN定位中也具有很大的潜力,如先前通过将DST与WLAN指纹结合使用所显示的那样。本文着重于路径丢失(PL)概率方法,与指纹方法相比,该方法具有较少的参数数量和较低的实现复杂性的优点。我们在文献中首次将PL位置估算器与DST结合在一起。 PL方法可以使用多种算法来实现,并且由于其简单性,本文中使用的反卷积算法是最有前途的实现之一。我们通过实地数据测量研究了PL方法的性能,并且表明与使用贝叶斯组合的方法相比,DST可以提高地板检测概率并减小距离均方根误差(RMSE)。

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