Abstract

Human gait analysis provides valuable information regarding the way of walking of a given subject. Low-cost RGB-D cameras, such as the Microsoft Kinect, are able to estimate the 3-D position of several body joints without requiring the use of markers. This 3-D information can be used to perform objective gait analysis in an affordable, portable, and non-intrusive way. In this contribution, we present a system for fully automatic gait analysis using a single RGB-D camera, namely the second version of the Kinect. Our system does not require any manual intervention (except for starting/stopping the data acquisition), since it firstly recognizes whether the subject is walking or not, and identifies the different gait cycles only when walking is detected. For each gait cycle, it then computes several gait parameters, which can provide useful information in various contexts, such as sports, healthcare, and biometric identification. The activity recognition is performed by a predictive model that distinguishes between three activities (walking, standing and marching), and between two postures of the subject (facing the sensor, and facing away from it). The model was built using a multilayer perceptron algorithm and several measures extracted from 3-D joint data, achieving an overall accuracy and F1 score of 98%. For gait cycle detection, we implemented an algorithm that estimates the instants corresponding to left and right heel strikes, relying on the distance between ankles, and the velocity of left and right ankles. The algorithm achieved errors for heel strike instant and stride duration estimation of 15 ± 25 ms and 1 ± 29 ms (walking towards the sensor), and 12 ± 23 ms and 2 ± 24 ms (walking away from the sensor). Our gait cycle detection solution can be used with any other RGB-D camera that provides the 3-D position of the main body joints.

Highlights

  • Human gait analysis is the systematic study of human walking [1]

  • As our objective is to develop an online solution for gait cycle detection, the model should be able to predict the activity in the shortest possible amount of time, besides achieving a high accuracy and F1 score

  • The window size used for filtering the 3-D joint data was of 17 frames, since it led to the highest mean overall accuracy considering all algorithms

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Summary

Introduction

Human gait analysis is the systematic study of human walking [1]. Quantitative gait information can be very useful in sports, biometric identification [2,3,4,5,6], and healthcare RGB-D camera system for gait analysis national funds through the North Portugal Regional Operational Programme (NORTE 2020) in the context of the project NORTE-01-0145-FEDER000016. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript

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