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A Statistical Indoor Localization Method for Supporting Location-based Access Control

机译:支持基于位置的访问控制的统计室内定位方法

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Location awareness is critical for supporting location-based access control (LBAC). The challenge is how to determine locations accurately and efficiently in indoor environments. Existing solutions based on WLAN signal strength either cannot provide high accuracy, or are too complicated to accommodate to different indoor environments. In this paper, we propose a statistical indoor localization method for supporting location-based access control. First, in an offline training phase, we fit a locally weighted regression and smoothing scatterplots (LOESS) model on the signal strength received at different training locations, and build a radio map that contains the distribution of signal strength. Then, in an online estimation phase, we determine the locations of unknown points using maximum likelihood estimation (MLE) based on the measured signal strength and the stored distribution. In addition, we provide a 95% confidence interval to our estimationrnusing a Bootstrapping module. Compared with other approaches, our method is simpler, more systematic and more accurate. Experimental results show that the estimation error of our method is less than 2m. Hence, it can better support LBAC applications than others.
机译:位置感知对于支持基于位置的访问控制(LBAC)至关重要。面临的挑战是如何在室内环境中准确,高效地确定位置。现有的基于WLAN信号强度的解决方案要么不能提供高精度,要么太复杂而无法适应不同的室内环境。在本文中,我们提出了一种统计室内定位方法,以支持基于位置的访问控制。首先,在离线训练阶段,我们对在不同训练位置接收到的信号强度拟合局部加权回归和平滑散点图(LOESS)模型,并构建包含信号强度分布的无线电图。然后,在在线估计阶段,我们基于测得的信号强度和存储的分布,使用最大似然估计(MLE)确定未知点的位置。此外,我们使用自举模块为估计提供95%的置信区间。与其他方法相比,我们的方法更简单,更系统,更准确。实验结果表明,该方法的估计误差小于2m。因此,它可以更好地支持LBAC应用程序。

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