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Indoor Pedestrian Localization Using iBeacon and Improved Kalman Filter

机译:使用iBeacon和改进的卡尔曼滤波的室内行人定位

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摘要

The reliable and accurate indoor pedestrian positioning is one of the biggest challenges for location-based systems and applications. Most pedestrian positioning systems have drift error and large bias due to low-cost inertial sensors and random motions of human being, as well as unpredictable and time-varying radio-frequency (RF) signals used for position determination. To solve this problem, many indoor positioning approaches that integrate the user’s motion estimated by dead reckoning (DR) method and the location data obtained by RSS fingerprinting through Bayesian filter, such as the Kalman filter (KF), unscented Kalman filter (UKF), and particle filter (PF), have recently been proposed to achieve higher positioning accuracy in indoor environments. Among Bayesian filtering methods, PF is the most popular integrating approach and can provide the best localization performance. However, since PF uses a large number of particles for the high performance, it can lead to considerable computational cost. This paper presents an indoor positioning system implemented on a smartphone, which uses simple dead reckoning (DR), RSS fingerprinting using iBeacon and machine learning scheme, and improved KF. The core of the system is the enhanced KF called a sigma-point Kalman particle filter (SKPF), which localize the user leveraging both the unscented transform of UKF and the weighting method of PF. The SKPF algorithm proposed in this study is used to provide the enhanced positioning accuracy by fusing positional data obtained from both DR and fingerprinting with uncertainty. The SKPF algorithm can achieve better positioning accuracy than KF and UKF and comparable performance compared to PF, and it can provide higher computational efficiency compared with PF. iBeacon in our positioning system is used for energy-efficient localization and RSS fingerprinting. We aim to design the localization scheme that can realize the high positioning accuracy, computational efficiency, and energy efficiency through the SKPF and iBeacon indoors. Empirical experiments in real environments show that the use of the SKPF algorithm and iBeacon in our indoor localization scheme can achieve very satisfactory performance in terms of localization accuracy, computational cost, and energy efficiency.
机译:可靠,准确的室内行人定位是基于位置的系统和应用程序面临的最大挑战之一。由于低成本的惯性传感器和人类的随机运动,以及用于位置确定的不可预测且随时间变化的射频(RF)信号,大多数行人定位系统具有漂移误差和较大的偏差。为了解决这个问题,许多室内定位方法将航位推算(DR)方法估算出的用户运动与通过贝叶斯滤波器通过RSS指纹获得的位置数据相结合,例如卡尔曼滤波器(KF),无味卡尔曼滤波器(UKF),近年来,已经提出了使用微粒过滤器(PF)和微粒过滤器(PF)来在室内环境中实现更高的定位精度。在贝叶斯滤波方法中,PF是最流行的集成方法,可以提供最佳的定位性能。但是,由于PF为了实现高性能而使用大量粒子,因此可能导致可观的计算成本。本文提出了一种在智能手机上实现的室内定位系统,该系统使用简单的航位推算(DR),使用iBeacon和机器学习方案的RSS指纹识别以及改进的KF。该系统的核心是增强的KF,称为sigma-point卡尔曼粒子滤波器(SKPF),它利用UKF的无味变换和PF的加权方法来定位用户。本研究中提出的SKPF算法用于通过融合不确定性从DR和指纹获得的位置数据来提供增强的定位精度。与PF相比,SKPF算法可以实现比KF和UKF更好的定位精度,并具有可比的性能,并且与PF相比可以提供更高的计算效率。我们定位系统中的iBeacon用于节能定位和RSS指纹识别。我们旨在设计一种定位方案,通过SKPF和iBeacon在室内实现高定位精度,计算效率和能源效率。实际环境中的经验实验表明,在我们的室内定位方案中使用SKPF算法和iBeacon可以在定位精度,计算成本和能效方面实现非常令人满意的性能。

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