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A Fade-Level Skew-Laplace Signal Strength Model for Device-Free Localization with Wireless Networks

机译:用于无线网络的无设备定位的渐隐级偏斜拉普拉斯信号强度模型

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Device-free localization (DFL) is the estimation of the position of a person or object that does not carry any electronic device or tag. Existing model-based methods for DFL from RSS measurements are unable to locate stationary people in heavily obstructed environments. This paper introduces measurement-based statistical models that can be used to estimate the locations of both moving and stationary people using received signal strength (RSS) measurements in wireless networks. A key observation is that the statistics of RSS during human motion are strongly dependent on the RSS "fade levelȁD; during no motion. We define fade level and demonstrate, using extensive experimental data, that changes in signal strength measurements due to human motion can be modeled by the skew-Laplace distribution, with parameters dependent on the position of person and the fade level. Using the fade-level skew-Laplace model, we apply a particle filter to experimentally estimate the location of moving and stationary people in very different environments without changing the model parameters. We also show the ability to track more than one person with the model.
机译:无设备定位(DFL)是对不携带任何电子设备或标签的人或物体的位置的估计。现有的基于RSS测量的DFL的基于模型的方法无法在严重阻塞的环境中定位平稳的人。本文介绍了基于测量的统计模型,该模型可用于通过无线网络中的接收信号强度(RSS)测量来估计移动人员和静止人员的位置。一个关键的观察结果是,在人体运动过程中RSS的统计数据在很大程度上取决于RSS“衰落水平ȁD;在不运动期间。”我们定义了衰落水平,并使用大量的实验数据证明了由于人体运动引起的信号强度测量的变化由偏斜拉普拉斯分布模型建模,其参数取决于人的位置和淡入淡出水平,使用淡入度的偏斜拉普拉斯模型,我们应用粒子滤波器实验性地估算了在非常不同的环境中移动和静止的人的位置在不更改模型参数的情况下,我们还展示了使用模型跟踪多个人的能力。

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