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基于概率性Wi-Fi指纹识别的室内定位中的条件熵与定位误差

Conditional Entropy and Location Error in Indoor Localization Using Probabilistic Wi-Fi Fingerprinting.

作者信息

Berkvens Rafael, Peremans Herbert, Weyn Maarten

机构信息

iMinds, MOSAIC, University of Antwerp, Faculty of Applied Engineering, Antwerp 2020, Belgium.

Engineering Management, University of Antwerp, Faculty of Applied Economics, Antwerp 2000, Belgium.

出版信息

Sensors (Basel). 2016 Oct 2;16(10):1636. doi: 10.3390/s16101636.

Abstract

Localization systems are increasingly valuable, but their location estimates are only useful when the uncertainty of the estimate is known. This uncertainty is currently calculated as the location error given a ground truth, which is then used as a static measure in sometimes very different environments. In contrast, we propose the use of the conditional entropy of a posterior probability distribution as a complementary measure of uncertainty. This measure has the advantage of being dynamic, i.e., it can be calculated during localization based on individual sensor measurements, does not require a ground truth, and can be applied to discrete localization algorithms. Furthermore, for every consistent location estimation algorithm, both the location error and the conditional entropy measures must be related, i.e., a low entropy should always correspond with a small location error, while a high entropy can correspond with either a small or large location error. We validate this relationship experimentally by calculating both measures of uncertainty in three publicly available datasets using probabilistic Wi-Fi fingerprinting with eight different implementations of the sensor model. We show that the discrepancy between these measures, i.e., many location estimates having a high location error while simultaneously having a low conditional entropy, is largest for the least realistic implementations of the probabilistic sensor model. Based on the results presented in this paper, we conclude that conditional entropy, being dynamic, complementary to location error, and applicable to both continuous and discrete localization, provides an important extra means of characterizing a localization method.

摘要

定位系统的价值日益凸显,但其位置估计只有在已知估计不确定性时才有用。当前,这种不确定性是根据给定地面真值的位置误差来计算的,然后在有时差异很大的环境中用作静态度量。相比之下,我们建议使用后验概率分布的条件熵作为不确定性的补充度量。这种度量的优点是动态的,即可以在定位过程中根据单个传感器测量值进行计算,不需要地面真值,并且可以应用于离散定位算法。此外,对于每个一致的位置估计算法,位置误差和条件熵度量都必须相关,即低熵应始终对应小的位置误差,而高熵可能对应小的或大的位置误差。我们通过使用具有八种不同传感器模型实现的概率性Wi-Fi指纹识别,在三个公开可用的数据集中计算这两种不确定性度量,对这种关系进行了实验验证。我们表明,对于概率性传感器模型最不现实的实现,这些度量之间的差异最大,即许多位置估计具有高位置误差,同时具有低条件熵。基于本文给出的结果,我们得出结论,条件熵具有动态性、是位置误差的补充,并且适用于连续和离散定位,它为表征定位方法提供了一种重要的额外手段。

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