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In-Body Ranging with Ultra-Wideband Signals: Techniques and Modeling of the Ranging Error

机译:超宽带信号的体内测距:测距技术和建模

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Results about the problem of accurate ranging within the human body using ultra-wideband signals are shown. The ability to accurately measure the range between a sensor implanted in the human body and an external receiver can make a number of new medical applications such as better wireless capsule endoscopy, next-generation microrobotic surgery systems, and targeted drug delivery systems possible. The contributions of this paper are twofold. First, we propose two novel range estimators one based on an implementation of the so-called CLEAN algorithm for estimating channel profiles and another based on neural networks. Second, we develop models to describe the statistics of the ranging error for both types of estimators. Such models are important for the design and performance analysis of localization systems. It is shown that the ranging error in both cases follows a heavy-tail distribution known as the Generalized Extreme Value distribution. Our results also indicate that the estimator based on neural networks outperforms the CLEAN-based estimator, providing ranging errors better than or equal to 3.23 mm with 90% probability.
机译:显示了有关使用超宽带信号在人体中进行精确测距问题的结果。准确测量植入人体的传感器与外部接收器之间的距离的能力可以使许多新的医学应用成为可能,例如更好的无线胶囊内窥镜检查,下一代微机器人手术系统和靶向药物输送系统。本文的贡献是双重的。首先,我们提出了两种新颖的距离估计器,一种基于所谓的CLEAN算法的实现,用于估计信道剖面,另一种基于神经网络。其次,我们开发模型来描述两种估算器的测距误差的统计数据。这样的模型对于本地化系统的设计和性能分析很重要。结果表明,两种情况下的测距误差均遵循重尾分布,即广义极值分布。我们的结果还表明,基于神经网络的估计器优于基于CLEAN的估计器,以90%的概率提供优于或等于3.23mm的测距误差。

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