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A Diffraction Measurement Model and Particle Filter Tracking Method for RSS-Based DFL

机译:基于RSS的DFL的衍射测量模型和粒子滤波跟踪方法

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Device-free localization (DFL) based on received signal strength (RSS) measurements functions by measuring RSS variation due to the presence of the target. The accuracy of a certain localization method closely depends on the accuracy of the measurement model itself. Existing models have been found not accurate enough under certain circumstances as they cannot explain some phenomena observed in DFL practices. In light of this, we propose a new model to characterize the RSS variation, which invokes diffraction theory and regards the target as a cylinder instead of a point mass. It is observed that the proposed model agrees well with experimental measurements, particularly when the target crosses the link or is in the vicinity of the link. Since the proposed measurement model is highly nonlinear, a particle filter-based tracking method is used to generate the approximate Bayesian estimate of the target position. As a performance benchmark, we have also derived the posterior Cramér–Rao lower bound of DFL for a diffraction model. A field test has shown that the proposed diffraction model may improve the tracking accuracy at least by 45% in a single-target case and by 27% in a double-target case.
机译:基于接收信号强度(RSS)测量的无设备定位(DFL)通过测量由于目标的存在而引起的RSS变化来实现。某种定位方法的准确性紧密取决于测量模型本身的准确性。发现现有模型在某些情况下不够准确,因为它们无法解释DFL实践中观察到的某些现象。有鉴于此,我们提出了一个表征RSS变化的新模型,该模型引用了衍射理论,将目标视为圆柱体而不是点质量。可以看出,所提出的模型与实验测量结果非常吻合,特别是当目标越过链接或在链接附近时。由于建议的测量模型是高度非线性的,因此使用基于粒子滤波器的跟踪方法来生成目标位置的近似贝叶斯估计。作为性能基准,我们还为衍射模型导出了DFL的后Cramér-Rao下界。现场测试表明,所提出的衍射模型在单目标情况下至少可以提高跟踪精度至少45%,在双目标情况下至少可以提高27%。

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