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Low Complexity Location Fingerprinting With Generalized UWB Energy Detection Receivers

机译:具有通用UWB能量检测接收器的低复杂度位置指纹

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摘要

In this paper, we propose and investigate location fingerprinting with a low complexity generalized ultrawideband (UWB) energy detection receiver. The energy samples at the output of the analog receiver front-end serve as location fingerprints. We formulate the position location problem as hypothesis testing problem and develop a Bayesian framework treating the location fingerprints as random vectors. In order to obtain an accurate stochastic description of the energy samples, which is required by the Bayesian framework, we provide two approaches. First, we derive a numerical algorithm to calculate the exact probability density functions of the energy samples, in case the UWB channel follows a Gaussian process. These results are used for benchmarking and performance prediction. Second, we propose closed form probability density functions based on a model selection criterion and measured energy samples. We show the accuracy and applicability of these closed form probability density functions in terms of performance results of the position location algorithm. The performance of the proposed location fingerprinting algorithm is evaluated based on measured UWB channels. The impact of important system parameters on the performance is investigated as well.
机译:在本文中,我们提出并研究了具有低复杂度的通用超宽带(UWB)能量检测接收器的位置指纹。模拟接收器前端输出处的能量样本用作位置指纹。我们将位置定位问题表述为假设检验问题,并开发一种将位置指纹视为随机向量的贝叶斯框架。为了获得贝叶斯框架要求的对能量样本的准确随机描述,我们提供了两种方法。首先,在超宽带信道遵循高斯过程的情况下,我们推导了一种数值算法来计算能量样本的精确概率密度函数。这些结果用于基准测试和性能预测。其次,我们基于模型选择标准和测得的能量样本提出封闭形式的概率密度函数。我们根据位置定位算法的性能结果显示了这些闭合形式的概率密度函数的准确性和适用性。所提出的位置指纹算法的性能是基于测量的UWB信道进行评估的。还研究了重要系统参数对性能的影响。

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