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Enhancing positioning accuracy through direct position estimators based on hybrid RSS data fusion

机译:通过基于混合RSS数据融合的直接位置估计增强定位精度

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In this paper, localization based on Received Signal Strength (RSS) is investigated assuming a path loss log normal shadowing model. On the one hand, indirect RSS-based estimation schemes are investigated; these schemes are based on two steps of estimation: estimation of ranges from RSS and then estimation of position using weighted least square approximation. We show that the performances of this type of schemes depend on the used estimator in the first step. We suggest that typical median estimator must be replaced by maximum likelihood estimator (mode) to enhance the positioning accuracy. On the other hand, a new direct RSS-based estimation scheme of position is proposed; Monte Carlo simulations show that the new estimator performs better than indirect estimators and can be reliable in future hybrid localization systems.
机译:在本文中,假设路径损耗日志常规阴影模型研究了基于接收信号强度(RSS)的本地化。一方面,研究了基于间接RSS的估计方案;这些方案基于两个估计步骤:使用加权最小二乘近似的RSS的范围估计。我们表明这种类型的方案的性能取决于第一步中的使用估计。我们建议,典型的中音估计器必须通过最大似然估计器(模式)替换,以提高定位精度。另一方面,提出了一种新的基于RSS的估计方案; Monte Carlo模拟表明,新的估计器比间接估算变得更好,并且可以在未来的混合本地化系统中可靠。

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