论文标题

超宽带双向测量的校准和不确定性表征

Calibration and Uncertainty Characterization for Ultra-Wideband Two-Way-Ranging Measurements

论文作者

Shalaby, Mohammed Ayman, Cossette, Charles Champagne, Forbes, James Richard, Ny, Jerome Le

论文摘要

超宽带(UWB)系统在室内定位中越来越流行,在室内定位中,通过测量无线电信号的飞行时间获得范围测量。但是,范围测量通常会遭受系统的错误或偏差,必须纠正高准确性定位。在本文中,提出了一个范围协议,并与可靠且可扩展的天线 - 延迟校准程序一起精确有效地校准了许多UWB标签的天线延迟。另外,测量的偏差和不确定性是根据接收信号功率的函数建模的。完整的校准程序使用3个配备2个UWB标签的空中机器人的实验训练数据显示,然后对2个测试实验进行了评估。然后在实验测试数据上提出定位问题,并将校准的测量值及其建模的不确定性送入扩展的卡尔曼滤波器(EKF)。该提出的校准显示出平均提高了定位精度46%。最后,该论文伴随着一个开源UWB-calibration Python库,可以在https://github.com/decargroup/uwb_calibration上找到。

Ultra-Wideband (UWB) systems are becoming increasingly popular for indoor localization, where range measurements are obtained by measuring the time-of-flight of radio signals. However, the range measurements typically suffer from a systematic error or bias that must be corrected for high-accuracy localization. In this paper, a ranging protocol is proposed alongside a robust and scalable antenna-delay calibration procedure to accurately and efficiently calibrate antenna delays for many UWB tags. Additionally, the bias and uncertainty of the measurements are modelled as a function of the received-signal power. The full calibration procedure is presented using experimental training data of 3 aerial robots fitted with 2 UWB tags each, and then evaluated on 2 test experiments. A localization problem is then formulated on the experimental test data, and the calibrated measurements and their modelled uncertainty are fed into an extended Kalman filter (EKF). The proposed calibration is shown to yield an average of 46% improvement in localization accuracy. Lastly, the paper is accompanied by an open-source UWB-calibration Python library, which can be found at https://github.com/decargroup/uwb_calibration.

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