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Auteurs principaux: Azhand, Arash, Rabe, Sophie, Müller, Swantje, Sattler, Igor, Steinert, Anika
Format: Preprint
Publié: 2020
Sujets:
Accès en ligne:https://arxiv.org/abs/2008.08045
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author Azhand, Arash
Rabe, Sophie
Müller, Swantje
Sattler, Igor
Steinert, Anika
author_facet Azhand, Arash
Rabe, Sophie
Müller, Swantje
Sattler, Igor
Steinert, Anika
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2008_08045
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle Algorithm Based on One Monocular Video Delivers Highly Valid and Reliable Gait Parameters
Azhand, Arash
Rabe, Sophie
Müller, Swantje
Sattler, Igor
Steinert, Anika
Signal Processing
Machine Learning
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.
title Algorithm Based on One Monocular Video Delivers Highly Valid and Reliable Gait Parameters
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2008.08045