Abstract

In this paper, we present a method for finding the enhanced heading and position of pedestrians by fusing the Zero velocity UPdaTe (ZUPT)-based pedestrian dead reckoning (PDR) and the kinematic constraints of the lower human body. ZUPT is a well known algorithm for PDR, and provides a sufficiently accurate position solution for short term periods, but it cannot guarantee a stable and reliable heading because it suffers from magnetic disturbance in determining heading angles, which degrades the overall position accuracy as time passes. The basic idea of the proposed algorithm is integrating the left and right foot positions obtained by ZUPTs with the heading and position information from an IMU mounted on the waist. To integrate this information, a kinematic model of the lower human body, which is calculated by using orientation sensors mounted on both thighs and calves, is adopted. We note that the position of the left and right feet cannot be apart because of the kinematic constraints of the body, so the kinematic model generates new measurements for the waist position. The Extended Kalman Filter (EKF) on the waist data that estimates and corrects error states uses these measurements and magnetic heading measurements, which enhances the heading accuracy. The updated position information is fed into the foot mounted sensors, and reupdate processes are performed to correct the position error of each foot. The proposed update-reupdate technique consequently ensures improved observability of error states and position accuracy. Moreover, the proposed method provides all the information about the lower human body, so that it can be applied more effectively to motion tracking. The effectiveness of the proposed algorithm is verified via experimental results, which show that a 1.25% Return Position Error (RPE) with respect to walking distance is achieved.

Highlights

  • The topic of human position tracking has recently attracted a great deal of attention

  • In order to verify the accuracy of the positioning system, various walking trajectories are tested with five randomly selected subjects who perform various physical movements

  • The origin point is established as the initial position, and the initial heading of all segments are aligned with the heading of the waist, which is measured using the magnetometer

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Summary

Introduction

The topic of human position tracking has recently attracted a great deal of attention. Tracking the location of a human using an inertial sensor has always been a very important problem and a great challenge for many indoor and outdoor applications because the inherent drift of the orientation and position estimates restricts long-term stable use of these sensors [23]. Handheld type PDR usually refers to a smartphone application In this case context awareness of the person is another issue for pedestrian positioning since the dynamic context affects the sensor attitude accuracy. The heading of the pedestrian is estimated through the inertial sensor that is attached at the waist. The proposed algorithm can be applied for various fields, such as positioning of pedestrians including first responders, 3D human motion capture, and rehabilitation training.

System Overview
Calibration
Foot Positioning Using ZUPT
Kinematic Model and PDR Fusion for Waist Localization
Segments Position Re-Update
Experimental Results
Conclusions
Full Text
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