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A Novel Bayesian Filtering Based Algorithm for RSSI-Based Indoor Localization

机译:基于贝叶斯滤波的基于RSSI的室内定位的新算法

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Indoor localization can provide a number of different services such as location-aware advertisement, indoor navigation and automating different appliances based on the user location. A number of different techniques such as time-difference- of-arrival, angle-of-arrival, time-of-flight, and received signal strength indicator (RSSI) have been used to provide Location Based Services (LBS). RSSI is one of the widely used methods as it is cost efficient and easy to implement. However, RSSI's performance is limited by multipath fading and indoor noise. Particle Filter (PF) is an accurate Bayesian Filtering algorithm that can improve the performance of RSSI-based indoor localization. However, PF is not able to satisfy the high accuracy requirement (possibly 10cm) of indoor localization. In this paper, we present Particle Filter-Extended Kalman Filter (PFEKF) cascaded algorithm that combines PF and EKF in series to reduce the impact of multipath effects and noise on the RSSI. Our experimental results show that PFEKF improves the localization accuracy by 31.3% and 33.9% in 3D and 2D environments respectively when compared with using only a PF.
机译:室内本地化可以提供许多不同的服务,例如基于用户位置的位置感知广告,室内导航和自动化不同的设备。已经使用了许多不同的技术,例如到达时间差,到达角度,飞行时间和接收信号强度指示符(RSSI)来提供基于位置的服务(LBS)。 RSSI是一种广泛使用的方法之一,因为它具有成本效率且易于实现。但是,RSSI的性能受到多径褪色和室内噪声的限制。粒子滤波器(PF)是一种精确的贝叶斯过滤算法,可以提高基于RSSI的室内定位的性能。然而,PF不能满足室内定位的高精度要求(可能10厘米)。在本文中,我们呈现粒子滤波器扩展卡尔曼滤波器(PFEKF)级联算法,将PF和EKF串联结合,以减少多径效应和噪声对RSSI的影响。我们的实验结果表明,与仅使用PF相比,PFEKF分别在3D和2D环境中通过31.3 \%和33.9 \%提高了本地化精度。

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