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Spatial Sparsity Based Indoor Localization in Wireless Sensor Network for Assistive Healthcare

机译:基于空间稀疏基于无线传感器网络的室内定位,用于辅助医疗保健

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Indoor localization is one of the key topics in the area of wireless networks with increasing applications in assistive healthcare, where tracking the position and actions of the patient or elderly are required for medical observation or accident prevention. Most of the common indoor localization methods are based on estimating one or more locationdependent signal parameters like TOA, AOA or RSS. However, some difficulties and challenges caused by the complex scenarios within a closed space significantly limit the applicability of those existing approaches in an indoor assistive environment, such as the well-known multipath effect. In this paper, we develop a new one-stage localization method based on spatial sparsity of the x-y plane. In this method, we directly estimate the location of the emitter without going through the intermediate stage of TOA or signal strength estimation. We evaluate the performance of the proposed method using Monte Carlo simulation. The results show that the proposed method is (i) very accurate even with a small number of sensors and (ii) very effective in addressing the multi-path issues.
机译:室内本地化是随着辅助医疗保健的增加,在辅助医疗保健中的应用程序中的应用领域的关键主题之一,在那里医疗观察或事故预防需要跟踪患者或老年人的位置和动作。大多数公共室内定位方法基于估计一个或多个位置依赖性信号参数,如TOA,AOA或RSS。然而,封闭空间内的复杂情景引起的一些困难和挑战显着限制了这些现有方法在室内辅助环境中的适用性,例如众所周知的多径效应。在本文中,我们开发了一种基于X-Y平面空间稀疏性的新的一级定位方法。在该方法中,我们直接估计发射器的位置而不经过TOA或信号强度估计的中间阶段。我们评估了蒙特卡罗模拟所提出的方法的性能。结果表明,即使具有少量传感器和(ii)在寻址多路径问题方面也非常准确,所提出的方法非常准确。

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