| Literature DB >> 27845715 |
Alejandro Correa1, Estefania Munoz Diaz2, Dina Bousdar Ahmed3, Antoni Morell4, Jose Lopez Vicario5.
Abstract
In recent years, there has been an increasing interest in the development of pedestrian navigation systems for satellite-denied scenarios. The popularization of smartphones and smartwatches is an interesting opportunity for reducing the infrastructure cost of the positioning systems. Nowadays, smartphones include inertial sensors that can be used in pedestrian dead-reckoning (PDR) algorithms for the estimation of the user's position. Both smartphones and smartwatches include WiFi capabilities allowing the computation of the received signal strength (RSS). We develop a new method for the combination of RSS measurements from two different receivers using a Gaussian mixture model. We also analyze the implication of using a WiFi network designed for communication purposes in an indoor positioning system when the designer cannot control the network configuration. In this work, we design a hybrid positioning system that combines inertial measurements, from low-cost inertial sensors embedded in a smartphone, with RSS measurements through an extended Kalman filter. The system has been validated in a real scenario, and results show that our system improves the positioning accuracy of the PDR system thanks to the use of two WiFi receivers. The designed system obtains an accuracy up to 1.4 m in a scenario of 6000 m 2 .Entities:
Keywords: aiding technology for INS; inertial sensors and systems; received signal strength; smartphone navigation systems; smartwatch
Mesh:
Year: 2016 PMID: 27845715 PMCID: PMC5134562 DOI: 10.3390/s16111903
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1System architecture.
Figure 2IMU processing block. The heading is estimated directly by the pocket navigation system. The speed is derived through the position estimate of the pocket navigation system.
Figure 3(Left) Maximum and minimum elongation of the red leg while walking; (right) Thigh pitch while walking. Each step can be detected by detecting each maximum of the pitch angle estimation (blue curve).
Figure 4Normalized histograms of the number of RSS measurements received from different anchor nodes at each time instant: (a) case of only using the smartphone for the measurements (b) case of using the smartphone and the smartwatch.
Figure 5Path 1 and odometry obtained with the pocket navigation system.
Figure 6Path 2 and odometry obtained with the pocket navigation system.
Figure 7Path 3 and odometry obtained with the pocket navigation system.
Results of the experimental validation in terms of RMSE. WLS, weighted least squares.
| Smartphone | Smartphone & Smartwatch | |||||
|---|---|---|---|---|---|---|
| IMU | WLS-Phone | EKF-Phone | WLS-Smart | EKF-Smart | ||
| Path 1 | ||||||
| Path 2 | ||||||
| Path 3 | 4 | |||||
Results of the experimental validation in terms of the 90 percentile.
| Smartphone | Smartphone & Smartwatch | |||||
|---|---|---|---|---|---|---|
| IMU | WLS-Phone | EKF-Phone | WLS-Smart | EKF-Smart | ||
| Path 1 | 11 | |||||
| Path 2 | 10 | 8 | ||||
| Path 3 | 3 | 5 | ||||
Figure 8CDF of the positioning estimation error in Path 1.
Figure 9CDF of the positioning estimation error in Path 2.
Figure 10CDF of the positioning estimation error in Path 3.