占用跟踪:使用建筑物中的非侵入式传感器的占用者存在感测和轨迹检测

Anooshmita Das, Emil Stubbe Kolvig Raun, Fisayo Caleb Sangogboye, M. Kjærgaard
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引用次数: 0

摘要

感知居住者的存在和他们在建筑物中的运动轨迹可以实现新型的分析和建筑运营策略。然而,以一种经济有效和非侵入性的方式获得这些信息是一项挑战。本文提出了占用-跟踪方法,用于如何大规模使用廉价的电池供电传感器来估计占用者的存在和运动轨迹。该技术结合了图分析和高级聚类来产生准确的估计。本文在两种不同的设置下验证了占位跟踪的有效性;一间音乐室和一间私人办公室。两个房间级部署的实验结果证明了该方法的优点,在弹道估计中,情况1的平均均方根误差为1.19米,情况2的平均均方根误差为0.88米。研究结果可以为非侵入式传感器产生的元数据提供新的研究维度,从而对有效的空间利用和楼层规划、智能建筑运营、人群管理、舒适的室内环境或人员管理做出明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occu-track: occupant presence sensing and trajectory detection using non-intrusive sensors in buildings
Sensing occupant presence and their trajectories of movement in buildings enable new types of analysis and building operation strategies. However, obtaining such information in a cost-efficient and non-intrusive manner is a challenge. This paper proposes the Occu-track method for how inexpensive battery-powered sensors can be used at scale to estimate occupant presence and movement trajectories. The technique combines graph analysis and advanced clustering to produce accurate estimates. This paper validates the efficiency of Occu-track in two different settings; a music room and a private office. The experimental results from two room-level deployments demonstrate the benefits of the approach obtaining an average Root Mean Squared Error of 1.19 meters for case 1 and 0.88 meters for case 2 for trajectory estimation. The results can contribute to new dimensions of research associated with the generation of metadata from non-intrusive sensors to make informed decisions about efficient space utilization and floor plans, intelligent building operations, crowd management, comfortable indoor environment, or managing personnel.
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