| Literature DB >> 30424200 |
Jingjing Shi1,2,3, Mingrong Ren4,5,6, Pu Wang7,8,9, Juan Meng10,11,12.
Abstract
Recently, the map matching-assisted positioning method based on micro-electromechanical systems (MEMS) inertial devices has become a research hotspot for indoor pedestrian positioning; however, these are based on existing indoor electronic maps. In this paper, without prior knowledge of the map and through building an indoor main path feature point map combined with the simultaneous localization and map building (SLAM) particle filter (PF-SLAM) algorithm idea, a PF-SLAM indoor pedestrian location algorithm based on a feature point map was proposed through the inertial measurement unit to improve indoor pedestrian positioning accuracy. Aiming at the problem of inaccurate heading angle estimation in the pedestrian dead reckoning (PDR) algorithm, a turn-straight-state threshold detection method was proposed that corrected the difference of the heading angles during the straight-line walking of pedestrians to suppress the error accumulation of the heading angle. Aiming at the particles that are severely divergent at the corners, a feature point matching algorithm was proposed to correct the pedestrian position error. Furthermore, the turning point extracted the main path that failed to match the current feature point map as a new feature point was added to update the map. Through the mutual modification of SLAM and an inertial navigation system (INS) the long-time, high-precision, and low-cost positioning functions of indoor pedestrians were realized.Entities:
Keywords: feature point matching; indoor localization; inertial navigation system (INS); particle filtering; simultaneous localization and map building (SLAM) algorithm
Year: 2018 PMID: 30424200 PMCID: PMC6187673 DOI: 10.3390/mi9060267
Source DB: PubMed Journal: Micromachines (Basel) ISSN: 2072-666X Impact factor: 2.891
Figure 1System architecture.
Figure 2(a) Part of the experiment site and (b) the schematic diagram of the fitting of the straight walking phase.
Figure 3(a) Pedestrian trajectory of inertial navigation system (INS) output and (b) corresponding heading angle data during walking.
Figure 4(a) Unsmoothed angle information and (b) smoothed angle information.
Figure 5Feature points extraction based on location information.
Figure 6Feature points map.
Figure 7Matching of feature point maps with interior building plans and the details of the two zoomed-in feature points.
Figure 8Flow chart of the particle filter-simultaneous localization and map building (PF-SLAM) location algorithm based on the feature point map.
Figure 9Feature point matching diagram.
Figure 10Inertial measurement unit (IMU) fixed to the experimenter’s foot.
Figure 11Experimental site and preset walking path.
Figure 12Pedestrian trajectory output by particle filter based on pedestrian dead reckoning.
Figure 13(a) The difference of the heading angle before corrected and (b) the difference of the heading angle after correction.
Figure 14Correction of pedestrian trajectory based on the turn-straight-state threshold detection method.
Figure 15Pedestrian interior trajectory corrected based on this algorithm.
Figure 16Pedestrian trajectory before correction.
Figure 17Pedestrian trajectory after correction.
Comparison of parameters before and after correction of the algorithm.
| Parameters | Experiment 1 | Experiment 2 | |
|---|---|---|---|
| Before Correction | Position error (%) | 1.8 | 1.3 |
| Number through wall | 6 | 3 | |
| After Correction | Position error (%) | 0.26 | 0.42 |
| Number through wall | 0 | 0 |