Measurement-wise recursive TDoA-based localization using local straight line approximation

Yonhon Ng, Junming Wei, Changbin Yu, Jonghyuk Kim
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引用次数: 1

Abstract

Locating the position of a target is a fundamental task in most robotic systems. This paper focuses on a passive localization method. The presented method uses passive, synchronised and localized radio sensors to take the time-difference-of-arrival (TDoA) measurements for different pairs of sensors, with reference to an unknown target-emitted radio signal. The localization method is simple, memory efficient and robust. Importantly, the proposed measurement-wise recursive method is suitable for real-time application of time-critical robotic systems. The method is easily transferable to other problems that involve finding the intersection point of multiple (curved) lines in the presence of noise. Monte Carlo simulations and experimental tests on real data were conducted to evaluate the performance of our localization method. The results obtained compare favourably to other well-known methods.
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使用局部直线近似的基于测量的递归tdoa定位
定位目标的位置是大多数机器人系统的基本任务。本文主要研究一种被动定位方法。该方法采用无源、同步和定位的无线电传感器,针对未知目标发射的无线电信号,对不同的传感器对进行到达时间差(TDoA)测量。定位方法简单、记忆效率高、鲁棒性好。重要的是,所提出的测量递归方法适用于时间关键型机器人系统的实时应用。该方法可以很容易地转移到涉及在存在噪声的情况下寻找多条(弯曲)线的交点的其他问题。通过蒙特卡罗仿真和实际数据的实验验证了该定位方法的性能。所得到的结果与其他已知的方法相比是很好的。
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