Abstract
Owing to autonomy and continuity, a pedestrian navigation system (PNS) has been widely deployed, which is based on the micro electro-mechanical system inertial measurement unit (MEMS-IMU) and the strapdown inertial navigation system (SINS). However, altitude information cannot be effectively obtained in this system by the double integral of vertical acceleration because of the altitude channel divergent of SINS. The study is aimed at improving the accuracy and robustness of altitude estimation through a novel method based on foot-mounted MEMS-IMU. More specifically, the proposed method exploits the adaptive network-based fuzzy inference system (ANFIS) to recognize vertical motion modes including horizontal, downstairs, and upstairs movements. Then, the pseudo height model based on both motion modes and the stair height is constructed for stair walking with different height. Finally, the pseudo measurements from the pseudo height model are integrated with the data from motion prediction through the extended Kalman filter (EKF). Experimental results show that the overall classification accuracy of ANFIS can reach up to 99.1%. Since ANFIS is utilized to assist height estimation, the cumulative height error accounts for about 1.2% over a total height of 44 m when a pedestrian walks up and down six floors without external facility and barometric pressure support. It is concluded that the ANFIS-based height estimation method can achieve better vertical positioning performance for PNS than the existing approaches in terms of accuracy and robustness.
Highlights
Indoor positioning is one of the core technologies of the artificial intelligence (AI) and the next-generation internet of things (IoT) [1]
To assist height estimation based on foot-mounted MEMSIMU, this paper proposes an adaptive network-based fuzzy inference system (ANFIS), which integrates the interpretability of fuzzy inference with the adaptive self-learning capability of the neural network
This paper has proposed the altitude determination approach integrating the pseudo height and the data from motion prediction through extended Kalman filter (EKF) for a user walking inside a multistory building with foot-mounted micro-electro-mechanical system (MEMS)-inertial measurement unit (IMU)
Summary
Indoor positioning is one of the core technologies of the artificial intelligence (AI) and the next-generation internet of things (IoT) [1]. In this algorithm, MEMS-IMU provides the 3-axis accelerometer, 3-axis magnetometer, and 3-axis gyroscope readings which are [fx fyfz], [magx magy magz], and [ωx ωyωz] in the body frame, respectively. The inertial height channel of SINS is divergent and the height of SINS solution will drift to some extent To solve this problem, ANFIS-based motion recognition is proposed to model the height measurement which is used to generate measurement updates for EKF. The modules include the INS mechanization, velocity constraint, and height constraint
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