Analysis and machine-learning based detection of outlier measurements of ultra-wideband in an obstructed environment

Yiming Quan, L. Lau, Faming Jing, Qian Nie, Alan Wen, Siu-Yeung Cho
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引用次数: 4

Abstract

Indoor positioning technologies have been widely used in many industrial applications such as intelligent inventory management and assembly control. Ultra-Wide Band (UWB) can provide sub-metre level positioning accuracy at a distance of several dozen metres with high robustness. However, UWB measurements can be contaminated by reflected, refracted and deflected signal in practice, the contaminated measurements are outliers in data processing and degrade the positioning performance if they are not treated properly. In indoor environments, UWB signals may penetrate some structures/materials and these refracted signals are outliers in data processing for position determination. This paper investigates the statistical distribution of errors due to refracted/penetrated signals. Classification and Regression random forests are used to detect outlier measurements and apply error mitigation, respectively. Two datasets are collected to cross-validate the proposed method. The results show that the proposed method can achieve a detection accuracy of about 80%. Besides, the datasets show that rejecting detected outlier measurements and applying error mitigation can improve distance measurement accuracy by 80%.
障碍物环境中超宽带异常值测量的分析和机器学习检测
室内定位技术已广泛应用于智能库存管理和装配控制等工业领域。超宽带(UWB)可以在几十米的距离内提供亚米级的定位精度,并且具有很高的鲁棒性。然而,在实际应用中,UWB测量会受到反射、折射和偏转信号的污染,这些污染的测量值在数据处理中是异常值,如果处理不当,会降低定位性能。在室内环境中,超宽带信号可能会穿透某些结构/材料,这些折射信号在定位数据处理中是异常值。本文研究了折射/穿透信号误差的统计分布。分类和回归随机森林分别用于检测异常值测量和应用误差缓解。收集了两个数据集来交叉验证所提出的方法。结果表明,该方法可达到80%左右的检测精度。此外,数据集表明,拒绝检测到的异常值并应用误差缓解可以将距离测量精度提高80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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