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头戴式传感器的行人 SLAM:HeadSLAM

HeadSLAM: Pedestrian SLAM with Head-Mounted Sensors.

机构信息

Natural Interaction Lab, Department of Engineering Science, University of Oxford, Oxford OX1 3PJ, UK.

出版信息

Sensors (Basel). 2022 Feb 18;22(4):1593. doi: 10.3390/s22041593.

Abstract

Research focused on human position tracking with wearable sensors has been developing rapidly in recent years, and it has shown great potential for application within healthcare, smart homes, sports, and emergency services. Pedestrian Dead Reckoning (PDR) with Inertial Measurement Units (IMUs) is one of the most promising solutions within this domain, as it does not rely on any additional infrastructure, whilst also being suitable for use in a diverse set of scenarios. However, PDR is only accurate for a limited period of time before unbounded errors, due to drift, affect the position estimate. Error correction can be difficult as there is often a lack of efficient methods for calibration. HeadSLAM, a method specifically designed for head-mounted IMUs, is proposed to improve the accuracy during longer tracking times (10 min). Research participants ( = 7) were asked to walk in both indoor and outdoor environments wearing head-mounted sensors, and the obtained HeadSLAM accuracy was subsequently compared to that of the PDR method. A significant difference ( < 0.001) in the average root-mean-squared error and absolute error was found between the two methods. HeadSLAM had a consist lower error across all scenarios and subjects in a 20 h walking dataset. The findings of this study show how the HeadSLAM algorithm can provide a more accurate long-term location service for head-mounted, low-cost sensors. The improved performance can support inexpensive applications for infrastructureless navigation.

摘要

近年来,使用可穿戴传感器进行人体位置跟踪的研究发展迅速,它在医疗保健、智能家居、运动和应急服务等领域显示出了巨大的应用潜力。惯性测量单元 (IMU) 的行人航位推算 (PDR) 是该领域最有前途的解决方案之一,因为它不依赖任何额外的基础设施,同时也适用于各种场景。然而,由于漂移,PDR 的位置估计在有限的时间内会出现无界误差,从而导致精度降低。由于缺乏有效的校准方法,因此很难进行误差修正。提出 HeadSLAM 方法是为了解决头戴式 IMU 长时间跟踪(10 分钟)时的精度问题。要求研究参与者(n=7)头戴传感器在室内和室外环境中行走,并比较 HeadSLAM 方法和 PDR 方法的准确性。两种方法的平均均方根误差和绝对误差的差异具有统计学意义(<0.001)。在 20 小时的步行数据集的所有场景和受试者中,HeadSLAM 的误差均明显更低。这项研究的结果表明,HeadSLAM 算法如何为头戴式低成本传感器提供更准确的长期位置服务。改进的性能可以支持基础设施导航的低成本应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/abfb/8875564/6c2726fe4b6a/sensors-22-01593-g001.jpg

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