Improving RF-based device-free passive localization in cluttered indoor environments through probabilistic classification methods

Chenren Xu, Bernhard Firner, Yanyong Zhang, R. Howard, Jun Li, Xiaodong Lin
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引用次数: 127

Abstract

Radio frequency based device-free passive localization has been proposed as an alternative to indoor localization because it does not require subjects to wear a radio device. This technique observes how people disturb the pattern of radio waves in an indoor space and derives their positions accordingly. The well-known multipath effect makes this problem very challenging, because in a complex environment it is impractical to have enough knowledge to be able to accurately model the effects of a subject on the surrounding radio links. In addition, even minor changes in the environment over time change radio propagation sufficiently to invalidate the datasets needed by simple fingerprint-based methods. In this paper, we develop a fingerprinting-based method using probabilistic classification approaches based on discriminant analysis. We also devise ways to mitigate the error caused by multipath effect in data collection, further boosting the classification likelihood. We validate our method in a one-bedroom apartment that has 8 transmitters, 8 receivers, and a total of 32 cells that can be occupied. We show that our method can correctly estimate the occupied cell with a likelihood of 97.2%. Further, we show that the accuracy remains high, even when we significantly reduce the training overhead, consider fewer radio devices, or conduct a test one month later after the training. We also show that our method can be used to track a person in motion and to localize multiple people with high accuracies. Finally, we deploy our method in a completely different commercial environment with two times the area achieving a cell estimation accuracy of 93.8% as an evidence of applicability to multiple environments.
利用概率分类方法改进室内杂乱环境下基于射频的无设备被动定位
基于射频的无设备无源定位已被提议作为室内定位的替代方案,因为它不需要受试者佩戴无线电设备。这项技术观察人们如何在室内干扰无线电波的模式,并据此得出他们的位置。众所周知的多径效应使得这个问题非常具有挑战性,因为在一个复杂的环境中,要有足够的知识来准确地模拟一个物体对周围无线电链路的影响是不切实际的。此外,随着时间的推移,即使环境的微小变化也足以改变无线电传播,从而使简单的基于指纹的方法所需的数据集失效。本文提出了一种基于判别分析的基于概率分类方法的指纹识别方法。我们还设计了一些方法来减轻数据收集中多径效应带来的误差,进一步提高分类的似然性。我们在一个一居室的公寓中验证了我们的方法,该公寓有8个发射器,8个接收器,总共有32个可占用的单元格。结果表明,该方法可以正确估计被占用的细胞,其似然率为97.2%。此外,我们表明,即使我们显着减少培训开销,考虑更少的无线电设备,或在培训后一个月进行测试,准确性仍然很高。我们还表明,我们的方法可以用于跟踪运动中的人,并以高精度定位多人。最后,我们在一个完全不同的商业环境中部署了我们的方法,在两倍的面积下实现了93.8%的小区估计精度,作为适用于多种环境的证据。
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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