海报摘要:利用室内无设备被动跟踪中的人体移动轨迹信息

Chenren Xu, Bernhard Firner, Yanyong Zhang, R. Howard, Jun Li
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引用次数: 8

摘要

无设备无源定位(DfP)是一种在室内通过观察受试者如何干扰无线电信号模式来定位受试者的方法,而无需受试者佩戴标签。在我们之前的工作中,我们提出了一种基于概率分类的DfP技术,我们简称PC-DfP,并证明PC-DfP可以在一居室公寓中以高达97.2%的准确率对固定受试者占用的单元格(总共32个单元格)进行分类。在这张海报中,我们将重点扩展PC-DfP来跟踪室内环境中的移动主体,同时考虑到人体主体的位置应该形成连续的轨迹。通过在一个10 × 15米的开放式办公室中进行的实验,我们表明利用连续移动轨迹的特性可以获得更好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poster abstract: Exploiting human mobility trajectory information in indoor device-free passive tracking
Device-free passive (DfP) localization is proposed to localize human subjects indoors by observing how the subject disturbs the pattern of the radio signals without having the subject wear a tag. In our previous work, we have proposed a probabilistic classification based DfP technique, which we call PC-DfP in short, and demonstrated that PC-DfP can classify which cell (32 cells in total) is occupied by the stationary subject with an accuracy as high as 97.2% in a one-bedroom apartment. In this poster, we focus on extending PC-DfP to track a mobile subject in indoor environments by taking into consideration that a human subject's locations should form a continuous trajectory. Through experiments in a 10 × 15 meters open plan office, we show that we can achieve better accuracies by exploiting the property of continuous mobility trajectories.
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