The Classification of Minor Gait Alterations Using Wearable Sensors and Deep Learning
release_7qb7vt7e3jdz7gmsgbn7w4mos4
by
Alexander Turner,
Stephen Hayes
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.
In text/plain
format
Archived Files and Locations
application/pdf
6.1 kB
file_2e32jcwqcvhztoj27b24ddjxla
| |
application/pdf
974.8 kB
file_leprr7bud5ezvfmrlbmxnhwava
|
hull-repository.worktribe.com (web) web.archive.org (webarchive) |
access all versions, variants, and formats of this works (eg, pre-prints)
Crossref Metadata (via API)
Worldcat
SHERPA/RoMEO (journal policies)
wikidata.org
CORE.ac.uk
Semantic Scholar
Google Scholar