The Classification of Minor Gait Alterations Using Wearable Sensors and Deep Learning release_7qb7vt7e3jdz7gmsgbn7w4mos4

by Alexander Turner, Stephen Hayes

Published in IEEE Transactions on Biomedical Engineering by Institute of Electrical and Electronics Engineers (IEEE).

2019   Volume 66, Issue 11, p1-1

Abstract

This paper describes how non-invasive wearable sensors can be used in combination with deep learning to classify artificially induced gait alterations without the requirement for a medical professional or gait analyst to be present. This approach is motivated by the goal of diagnosing gait abnormalities on a symptom-by-symptom basis, irrespective of other neuromuscular movement disorders the patients may be affected by. This could lead to improvements in treatment and offer a greater insight into movement disorders.
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