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Device-free localization with received signal strength measurements in wireless networks.

机译:无线网络中的无设备定位和接收信号强度测量。

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摘要

Device-free localization (DFL) is the practice of locating people or objects when no tag or device is attached to the entity being tracked. DFL technologies are useful in applications where the targets being tracked and detected are not expected to cooperate with the system. This may be the case because the entities being tracked are evading surveillance, because they are unable, or because they do not want to be inconvenienced. This dissertation discusses some novel and cost-effective methods for locating people with received signal strength (RSS) measurements in wireless networks.;The first contribution of this work presents a linear model for using received signal strength (RSS) measurements to obtain images of moving objects, a process called radio tomographic imaging (RTI). Noise models are investigated based on real measurements of a deployed RTI system. Mean-squared error (MSE) bounds on image accuracy are derived, which are used to calculate the accuracy of an RTI system for a given node geometry. The ill-posedness of RTI is discussed, and Tikhonov regularization is used to derive an image estimator.;We then present variance-based RTI, which takes advantage of the motioninduced variance of received signal strength measurements. Using a multipath channel model, we show that the signal strength on a wireless link is largely dependent on the power contained in multipath components that travel through space containing moving objects. A statistical model relating variance to spatial locations of movement is presented and used as a framework for the estimation of a motion image.;The final contribution of this dissertation introduces measurement-based statistical models that can be used to estimate the locations of people using signal strength measurements in wireless networks. We demonstrate, using extensive experimental data, that changes in signal strength measurements due to human motion can be modeled by the skew-Laplace distribution. The parameters of the distribution are dependent on the position of person and on the amount of fading that a particular link experiences. Using the skew-Laplace likelihood model, we apply a particle filter to experimentally estimate the location of moving and stationary people through walls.
机译:无设备定位(DFL)是在没有标签或设备附加到被跟踪实体时定位人员或对象的实践。 DFL技术在不希望被跟踪和检测到的目标与系统配合的应用中很有用。可能是由于被跟踪的实体正在逃避监视,由于它们无法执行或者不想让他们感到不便而导致的。本文讨论了在无线网络中定位具有接收信号强度(RSS)测量值的人的一些新颖且具有成本效益的方法。这项工作的第一点是提出了一个线性模型,用于使用接收信号强度(RSS)测量值来获得运动图像。物体,称为无线电层析成像(RTI)的过程。基于部署的RTI系统的实际测量结果研究噪声模型。得出图像精度的均方误差(MSE)范围,用于计算给定节点几何形状的RTI系统的精度。讨论了RTI的不适性,并使用Tikhonov正则化来得出图像估计量。然后,我们提出了基于方差的RTI,它利用了运动引起的接收信号强度测量的方差。使用多径信道模型,我们显示出无线链路上的信号强度在很大程度上取决于多径分量所包含的功率,这些分量会通过包含运动物体的空间传播。提出了一种与运动的空间位置相关的方差统计模型,并将其用作运动图像估计的框架。本论文的最后贡献是引入了基于测量的统计模型,该模型可用于估计使用信号的人的位置无线网络中的强度测量。我们证明,使用大量的实验数据,可以通过偏斜拉普拉斯分布来模拟由于人类运动引起的信号强度测量值的变化。分布的参数取决于人的位置以及特定链接经历的衰落量。使用偏斜拉普拉斯似然模型,我们应用了粒子过滤器,以实验方式估算出移动和固定人员穿过墙壁的位置。

著录项

  • 作者

    Wilson, Anthony Joseph.;

  • 作者单位

    The University of Utah.;

  • 授予单位 The University of Utah.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 160 p.
  • 总页数 160
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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