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Error reduction in distance estimation of RSS propagation models using Kalman filters

机译:使用Kalman滤波器距离RSS传播模型的距离估计误差

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In this paper, we propose an indoor localization system that integrates the received signal strength (RSS) correction methods with probabilistic propagation models. The proposed system aims to achieve accurate modeling of signals' propagation inside buildings without the need for expensive site surveys. This is achieved by eliminating the environmental noise causing temporal variations in the RSS measurements, using the Kalman filtering technique. In addition, we use Gaussian Process Regression (GPR) to model the signal propagation inside buildings as a function of distance. Our experimental results support our argument that GPR models outperform the conventional path-loss model. In addition, our results also show that integrating Kalman filters with GPR models improves the accuracy of distance estimation by almost 2 meters.
机译:在本文中,我们提出了一种室内定位系统,其与概率传播模型集成了接收的信号强度(RSS)校正方法。该建议的系统旨在实现昂贵的站点调查的情况下实现信号在建筑物内部传播的准确建模。使用Kalman滤波技术,通过消除导致RSS测量的时间变化的环境噪声来实现这一点。此外,我们使用高斯进程回归(GPR)来模拟建筑物内的信号传播作为距离的函数。我们的实验结果支持我们的论点,即GPR模型优于传统的路径损失模型。此外,我们的结果还表明,将卡尔曼滤波器与GPR模型集成,提高了近2米的距离估计的准确性。

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