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A Bayesian Approach to Dealing with Device Heterogeneity in an Indoor Positioning System

机译:用于室内定位系统中设备异质性的贝叶斯方法

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摘要

There are many practical applications in which the ability to localize devices such as phones, tablets, and mobile equipment is important. One of the issues which makes this difficult is the fact that devices are all different, so an approach which is robust against device heterogeneity would be an advance. In this paper, a method for estimating the positions of transmitting devices using Wi-Fi and a network of access points (APs) is proposed and investigated. The APs can also function as transmitters; as such the method allows simultaneous calibration and localization, so no fingerprinting or separate calibration is required. A hierarchical Bayesian probabilistic model is used with separate but conditionally-related parameters for each transmitter and receiver to tackle the device inhomogeneity problem. The output is a probability distribution over the location of each device from which the expected location and measures of uncertainty in location can be obtained. The system was implemented in an office environment using heterogeneous transmitters and receivers. The system localized the devices with a median error of 1.7 meters and within 4.32 meters with 95% confidence. We discovered that it is more important to account for inhomogeneity in the transmitters than in the receivers. Removing the former from the model results in a median error of 6.57 m(10.56 m) whereas removing the latter results in a median error 1.93 m(4.64 m), We argue that the technique could be used to cope with other types of inhomogeneities in the environments or the Wi-Fi equipment.
机译:在许多实际应用中,对诸如电话,平板电脑和移动设备之类的设备进行本地化的能力很重要。使这一困难变得困难的一个问题是设备都是不同的事实,因此一种对设备异质性具有鲁棒性的方法将是一种进步。在本文中,提出并研究了一种用于估计使用Wi-Fi和接入点(AP)网络的发送设备位置的方法。 AP也可以充当发送器;因此,该方法允许同时进行校准和定位,因此不需要指纹或单独的校准。对于每个发送器和接收器,使用带有单独但有条件相关参数的分层贝叶斯概率模型,以解决设备的不均匀性问题。输出是每个设备位置上的概率分布,从中可以获得预期位置和位置不确定性的度量。该系统是在办公环境中使用异构发送器和接收器实现的。系统以95米的置信度对设备进行了本地化,平均误差为1.7米,误差在4.32米以内。我们发现,考虑到发射器中的不均匀性比接收器中的不均匀性更为重要。从模型中删除前者会导致6.57 m(10.56 m)的中位数误差,而从模型中删除会导致中值误差1.93 m(4.64 m),我们认为该技术可用于应对其他类型的不均匀性。环境或Wi-Fi设备。

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