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A Deep Learning Approach to Position Estimation from Channel Impulse Responses

机译:一种基于通道冲激响应的位置估计的深度学习方法

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摘要

Radio-based locating systems allow for a robust and continuous tracking in industrial environments and are a key enabler for the digitalization of processes in many areas such as production, manufacturing, and warehouse management. Time difference of arrival (TDoA) systems estimate the time-of-flight (ToF) of radio burst signals with a set of synchronized antennas from which they trilaterate accurate position estimates of mobile tags. However, in industrial environments where multipath propagation is predominant it is difficult to extract the correct ToF of the signal. This article shows how deep learning (DL) can be used to estimate the position of mobile objects directly from the raw channel impulse responses (CIR) extracted at the receivers. Our experiments show that our DL-based position estimation not only works well under harsh multipath propagation but also outperforms state-of-the-art approaches in line-of-sight situations.
机译:基于无线电的定位系统允许在工业环境中进行稳定而连续的跟踪,并且是在许多领域(例如生产,制造和仓库管理)中流程数字化的关键推动力。到达时间差(TDoA)系统使用一组同步天线估算无线电脉冲串信号的飞行时间(ToF),从中它们可以对移动标签的精确位置估算进行三重化。但是,在多径传播占主导的工业环境中,很难提取正确的信号ToF。本文展示了如何使用深度学习(DL)直接从接收器提取的原始信道冲激响应(CIR)估计移动对象的位置。我们的实验表明,我们基于DL的位置估计不仅在恶劣的多径传播下运行良好,而且在视线情况下也优于最新方法。

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