无线局域网信号和未知接入点位置下基于反卷积的室内定位

Shweta Shrestha, J. Talvitie, E. Lohan
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引用次数: 63

摘要

本文将基于接收信号强度(RSS)的无线局域网定位问题重新定义为一个反卷积问题,并在几种RSS路径损失模型下研究了三种反卷积方法(即最小二乘法、加权最小二乘法和最小均方误差)。将反卷积方法与指纹识别方法在性能和复杂度方面进行了比较。与指纹识别方法相比,基于反卷积的方法的主要优点是,为了基于wlan的定位,需要存储在服务器端(并传输到移动设备)的训练数据库的大小显著减少。我们将证明,基于反卷积的估计可以将训练数据库的大小减少十倍,同时仍然能够在距离估计中获得可比的均方根误差。
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Deconvolution-based indoor localization with WLAN signals and unknown access point locations
In this paper, the problem of Received Signal Strength (RSS)-based WLAN positioning is newly formulated as a deconvolution problem and three deconvolution methods (namely Least Squares, Weighted Least Squares and Minimum Mean Square Error) are investigated with several RSS path loss models. The deconvolution approaches are compared with the fingerprinting approach in terms of performance and complexity. The main advantage of the deconvolution-based approaches versus the fingerprinting methods is the significant reduction in the size of the training database that need to be stored at the server side (and transferred to the mobile device) for the WLAN-based positioning. We will show that the deconvolution based estimation can decrease of the order of ten times the size of the training database, while still being able to achieve comparable root mean square errors in the distance estimation.
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