Abstract

Despite its paramount importance for manifold use cases (e.g., in the health care industry, sports, rehabilitation and fitness assessment), sufficiently valid and reliable gait parameter measurement is still limited to high-tech gait laboratories mostly. Here, we demonstrate the excellent validity and test–retest repeatability of a novel gait assessment system which is built upon modern convolutional neural networks to extract three-dimensional skeleton joints from monocular frontal-view videos of walking humans. The validity study is based on a comparison to the GAITRite pressure-sensitive walkway system. All measured gait parameters (gait speed, cadence, step length and step time) showed excellent concurrent validity for multiple walk trials at normal and fast gait speeds. The test–retest-repeatability is on the same level as the GAITRite system. In conclusion, we are convinced that our results can pave the way for cost, space and operationally effective gait analysis in broad mainstream applications. Most sensor-based systems are costly, must be operated by extensively trained personnel (e.g., motion capture systems) or—even if not quite as costly—still possess considerable complexity (e.g., wearable sensors). In contrast, a video sufficient for the assessment method presented here can be obtained by anyone, without much training, via a smartphone camera.

Highlights

  • Despite its paramount importance for manifold use cases, sufficiently valid and reliable gait parameter measurement is still limited to high-tech gait laboratories mostly

  • Two videos were captured for each walk sequence by each subject, one using a hand-held smartphone (SCA Hand) and one using a smartphone fixed on a stand (SCA Stand)

  • The purpose of this study was to demonstrate the validity of a purely algorithmic gait assessment application based on walking videos taken with monocular smartphone cameras in relation to the Gold Standard gait assessment system GAITRite (GS)

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Summary

Introduction

Despite its paramount importance for manifold use cases (e.g., in the health care industry, sports, rehabilitation and fitness assessment), sufficiently valid and reliable gait parameter measurement is still limited to high-tech gait laboratories mostly. The advent of computers made it possible to process large amounts of data much more efficiently, allowing for the developing of gait assessment laboratory systems These systems mostly consist of 4 to 10 video cameras in a lab setting. One other popular gold-standard tool for clinical gait assessment is the GAITRite pressure-sensitive carpet system (hereafter referred to as GS), which has been validated against the Vicon ­system[16,17]. Though this system exhibited high validity and repeatability, it is still not accessible to the broad mainstream. Given the need and demand of precise and reliable human motion analysis in diverse areas, it is paramount to assess if modern computer vision algorithms (classification, detection, and segmentation of objects in images) might have the potential for powering state-of-the-art human mobility and gait assessment systems of the future at much lower cost in financial and human resources compared to traditional motion capture systems and gait labs

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