Abstract

Most existing wearable gait analysis methods focus on the analysis of data obtained from inertial sensors. This paper proposes a novel, low-cost, wireless and wearable gait analysis system which uses microphone sensors to collect footstep sound signals during walking. This is the first time a microphone sensor is used as a wearable gait analysis device as far as we know. Based on this system, a gait analysis algorithm for estimating the temporal parameters of gait is presented. The algorithm fully uses the fusion of two feet footstep sound signals and includes three stages: footstep detection, heel-strike event and toe-on event detection, and calculation of gait temporal parameters. Experimental results show that with a total of 240 data sequences and 1732 steps collected using three different gait data collection strategies from 15 healthy subjects, the proposed system achieves an average 0.955 F1-measure for footstep detection, an average 94.52% accuracy rate for heel-strike detection and 94.25% accuracy rate for toe-on detection. Using these detection results, nine temporal related gait parameters are calculated and these parameters are consistent with their corresponding normal gait temporal parameters and labeled data calculation results. The results verify the effectiveness of our proposed system and algorithm for temporal gait parameter estimation.

Highlights

  • ObjectivesThis means that after SVM classification, it can determine whether an audio frame corresponds to a footstep or not. our objective is to detect

  • Gait analysis (GA) is the systematic research of human walking locomotion, and it has been widely used in health diagnostics [1] or rehabilitation [2] for tasks such as assessing balance and mobility in abnormal gait patients before treatment and monitoring recovery status after treatment

  • The study results show that footsteps could be identified with high recall rate and high F1-measure through footstep sound signals in normal walking gait, and two important gait cycle events in one footstep could be detected with high accuracy

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Summary

Objectives

This means that after SVM classification, it can determine whether an audio frame corresponds to a footstep or not. our objective is to detect. This means that after SVM classification, it can determine whether an audio frame corresponds to a footstep or not. Our objective is to detect peaks by a probability threshold value. Our objective is to find out the time point of heel-strike and toe-on in this detected footstep range

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