基于iOS平台的低功耗蓝牙室内定位

S. Duong, Anh Vu Trinh, T. Dinh
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引用次数: 5

摘要

在这个物联网(IoT)时代,室内定位(IPS)被认为是最受欢迎的话题之一,并在世界范围内得到了广泛的研究,因为它可以提供各种应用。然而,IPS也是一个具有挑战性的主题,它有许多严格的要求,例如成本、能源效率、可用性和准确性。低功耗蓝牙(BLE) iBeacon的发展为研究人员解决这些挑战提供了巨大的机会。本文介绍了基于iBeacon的定位系统,并构建了一个运行在iOS平台上的应用程序。我们还介绍了指纹识别-我们系统中使用的主要定位技术,我们在其中配置指纹以提高准确性。然后,应用一种称为k-最近邻(kNN)的机器学习算法来提取最可能的用户位置。此外,我们还使用了卡尔曼滤波器来增强iBeacon信号的稳定性。该系统的准确率为60% ~ 71.4%,误差不超过1.6 m,在IPS中可以接受。
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Bluetooth Low Energy Based Indoor Positioning on iOS Platform
In this age of IoT (Internet of Things), Indoor Positioning (IPS) is considered as one of the most popular topics and has been researched widely all around the world, as the result of various applications it can provide. However, IPS is also a challenging topic that has a number of stringent requirements, such as cost, energy efficiency, availability and accuracy. The development of Bluetooth Low Energy (BLE) iBeacon has opened great opportunities for researchers to solve those challenges. In this paper, we present our iBeacon based positioning system, which we built as an application running on iOS platform. We also present Fingerprinting - the main positioning technique used in our system, in which we configure its fingerprints to improve accuracy. With that, a machine learning algorithm called k-Nearest Neighbor (kNN) is applied to extract the most probable user location. In addition, we also use Kalman Filter in order to enhance the stability of iBeacon's signal. Our system results in a 60% - 71.4% accuracy rate and an error of up to 1.6 m, which is acceptable in IPS.
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