| Literature DB >> 26404314 |
Guoliang Chen1, Xiaolin Meng2, Yunjia Wang3, Yanzhe Zhang4, Peng Tian5, Huachao Yang6.
Abstract
Because of the high calculation cost and poor performance of a traditional planar map when dealing with complicated indoor geographic information, a WiFi fingerprint indoor positioning system cannot be widely employed on a smartphone platform. By making full use of the hardware sensors embedded in the smartphone, this study proposes an integrated approach to a three-dimensional (3D) indoor positioning system. First, an improved K-means clustering method is adopted to reduce the fingerprint database retrieval time and enhance positioning efficiency. Next, with the mobile phone's acceleration sensor, a new step counting method based on auto-correlation analysis is proposed to achieve cell phone inertial navigation positioning. Furthermore, the integration of WiFi positioning with Pedestrian Dead Reckoning (PDR) obtains higher positional accuracy with the help of the Unscented Kalman Filter algorithm. Finally, a hybrid 3D positioning system based on Unity 3D, which can carry out real-time positioning for targets in 3D scenes, is designed for the fluent operation of mobile terminals.Entities:
Keywords: Unity 3D; Unscented Kalman Filter; WiFi/PDR; auto-correlation analysis; clustering; indoor localization
Year: 2015 PMID: 26404314 PMCID: PMC4610469 DOI: 10.3390/s150924595
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Positioning process.
Figure 2Distribution of sampling and test points.
Figure 3Clustering results.
Number of sampling points in each cluster.
| 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | |
| 27 | 58 | 62 | 35 | 36 | 13 | 43 | 61 | 55 |
Figure 4Single-point positioning time.
Figure 5Single-point positioning average error.
Figure 6Single-point positioning maximum error.
Figure 7PDR principle.
Figure 8Schematic of coordinate axes.
Figure 9Three-axis acceleration of a mobile phone.
Figure 10Distribution of the standard deviation of the overall acceleration in stationary and walking states.
Figure 11Distribution of auto-correlation during stationary and walking states.
Performance of the auto-correlation algorithm.
| Position of Mobile Phone | Motion State of Pedestrian | Peak Detection Algorithm Steps | Auto-Correlation Algorithm Steps | True steps |
|---|---|---|---|---|
| In Hand | Changing frequency of walking | 224 | 196 | 200 |
| In Jacket pocket | Constant speed walking | 233 | 202 | 200 |
| In Hand | phone using when walking | 204 | 198 | 200 |
| In Hand | Constant speed walking | 199 | 197 | 200 |
| In Hand | Idle | 0 | 0 | 0 |
| Change positions | Idle | 6 | 6 | 0 |
Figure 12UKF process.
Figure 13UKF positioning test.
Figure 14UKF positioning comparison test.
Figure 15Structure of the 3D indoor positioning system.
Figure 16Indoor positioning test field.
Figure 17Interface of 3D-indoor Positioning System.