一种消防员自动精确定位系统

Jinyang Li, Zhiheng Xie, Xiaoshan Sun, Jian Tang, Hengchang Liu, J. Stankovic
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引用次数: 10

摘要

消防人员的安全是一个关键问题,缺乏可靠的室内消防人员定位是一个主要问题。最先进的方法无法为恶劣环境中的消防员提供自动、准确和可靠的解决方案。本文提出了一种新的系统来实现这一目标,该系统将行人航位推算与最近出现的面包屑系统相结合。我们的解决方案包括一种新的协作定位算法,该算法包含一种新的边缘方案,可以提高消防员的定位精度。我们在一个完整的系统中充分实现了算法,并在办公楼和模拟消防场景中进行了实验,其中包括真实的火灾和专业消防员。400米长的轨迹评估结果表明,我们的方法显著降低了消防员定位误差的平均值和最大值,分别为总距离的1.4%和2.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automatic and Accurate Localization System for Firefighters
Firefighters' safety is a critical problem and a major issue is the lack of reliable indoor firefighter localization. State of the art approaches have failed to provide an automatic, accurate and reliable solution to localize firefighters in harsh environments. This paper presents a novel system to achieve this goal, by combining pedestrian dead reckoning with a recently emerging breadcrumb system. Our solution includes a new collaborative localization algorithm that contains a novel marginalization scheme and can improve the location accuracy of firefighters. We fully implement the algorithm in a complete system and conduct experiments in both an office building and in a simulated firefighting scene that involved a real fire and professional firefighters. Evaluation results from a 400 meter-long trace demonstrate that our approach significantly reduces the average and maximum firefighter location error to 1.4% and 2.7% of the total distance, respectively.
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