Abstract

Indoor wireless localization using Bluetooth Low Energy (BLE) beacons has attracted considerable attention after the release of the BLE protocol. In this paper, we propose an algorithm that uses the combination of channel-separate polynomial regression model (PRM), channel-separate fingerprinting (FP), outlier detection and extended Kalman filtering (EKF) for smartphone-based indoor localization with BLE beacons. The proposed algorithm uses FP and PRM to estimate the target’s location and the distances between the target and BLE beacons respectively. We compare the performance of distance estimation that uses separate PRM for three advertisement channels (i.e., the separate strategy) with that use an aggregate PRM generated through the combination of information from all channels (i.e., the aggregate strategy). The performance of FP-based location estimation results of the separate strategy and the aggregate strategy are also compared. It was found that the separate strategy can provide higher accuracy; thus, it is preferred to adopt PRM and FP for each BLE advertisement channel separately. Furthermore, to enhance the robustness of the algorithm, a two-level outlier detection mechanism is designed. Distance and location estimates obtained from PRM and FP are passed to the first outlier detection to generate improved distance estimates for the EKF. After the EKF process, the second outlier detection algorithm based on statistical testing is further performed to remove the outliers. The proposed algorithm was evaluated by various field experiments. Results show that the proposed algorithm achieved the accuracy of <2.56 m at 90% of the time with dense deployment of BLE beacons (1 beacon per 9 m), which performs 35.82% better than <3.99 m from the Propagation Model (PM) + EKF algorithm and 15.77% more accurate than <3.04 m from the FP + EKF algorithm. With sparse deployment (1 beacon per 18 m), the proposed algorithm achieves the accuracies of <3.88 m at 90% of the time, which performs 49.58% more accurate than <8.00 m from the PM + EKF algorithm and 21.41% better than <4.94 m from the FP + EKF algorithm. Therefore, the proposed algorithm is especially useful to improve the localization accuracy in environments with sparse beacon deployment.

Highlights

  • IntroductionWireless localization has been widely used among these technologies

  • 61.44% over propagation model (PM) + extended Kalman filtering (EKF) (9.31 m) and 20.58% over FP + EKF (4.52 m). These results demonstrate that proposed algorithm achieves around 4.0 m 90% localization error in the two trajectories with the the proposed algorithm achieves around 4.0 m 90% localization error in the two trajectories with the sparse deployment of Bluetooth Low Energy (BLE) beacons, which performs much better than the traditional PM + EKF and sparse deployment of BLE beacons, which performs much better than the traditional PM + EKF and FP + EKF

  • This paper proposed an innovative algorithm based on the integration of channel-separate polynomial regression model (PRM), channel-separate fingerprinting (FP), extended Kalman filtering (EKF), and outlier detection for indoor localization using Bluetooth Low Energy (BLE) beacons

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Summary

Introduction

Wireless localization has been widely used among these technologies. WiFi localization is the most common consumer wireless localization technology [1,18,19]. Another important candidate for wireless localization on consumer smart devices is Bluetooth. The traditional Bluetooth has a significantly long scan time (~10 s), which limits its value for localization. The new Bluetooth protocol (i.e., Bluetooth Low Energy, BLE), supported by most current smart devices, has overcome the limitations of long scan time. The BLE beacons have the following advantages: small size, light weight, low cost, power saving and are widely supported by smart devices. BLE has the potential to become a dominant wireless localization technology

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