Signal perturbation based support vector regression for Wi-Fi positioning

Yubin Xu, Zhian Deng, Lin Ma, W. Meng, Cheng Li
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引用次数: 7

Abstract

Location estimation using received signal strength (RSS) in pervasively available Wi-Fi infrastructures has been considered as a popular indoor positioning solution. However, accuracy deterioration due to uncertainty of RSS and offline manual calibration cost limit the deployment of Wi-Fi positioning systems. This paper proposes a signal perturbation technique to enhance existing support vector regression (SVR) based Wi-Fi positioning. By signal perturbation, more RSS training samples are generated, thus enhancing the generalization ability of SVR. In addition, access point (AP) selection method is applied to reduce the input dimension by discarding the redundant APs. The proposed method is compared with previous classical methods in a real wireless indoor environment. Experimental results show that the proposed method improves accuracy while reducing calibration cost.
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基于信号摄动的支持向量回归Wi-Fi定位
在普遍可用的Wi-Fi基础设施中使用接收信号强度(RSS)进行位置估计已被认为是一种流行的室内定位解决方案。然而,由于RSS的不确定性和离线人工校准成本导致的精度下降限制了Wi-Fi定位系统的部署。本文提出了一种信号摄动技术来增强现有的基于支持向量回归(SVR)的Wi-Fi定位。通过信号扰动,生成了更多的RSS训练样本,增强了SVR的泛化能力。此外,采用AP选择方法,通过丢弃冗余AP来降低输入维数。在真实的无线室内环境中,将该方法与以往的经典方法进行了比较。实验结果表明,该方法在降低标定成本的同时提高了标定精度。
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