A lightweight approach to gait abnormality detection for At Home health monitoring

Chris Lochhead*, Robert B Fisher

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Gait abnormality detection is a growing application in machine learning based health assessment due to its potential in domains from clinical health reviews to at home health monitoring. This latter application is of particular use for older adults, who are more likely to experience health issues that can be indicated by changes in gait, namely through fall-related injuries or age-related degenerative diseases like Parkinson's disease. While there exists a great deal of research concerning machine learning models for detecting everything from freezing-of-gait to falls, much of this work relies on clinical assessment settings and large models with extensive data, making many developments unusable in at-home applications where such technology could be used to great benefit in maintaining the independence and health of older adults. To address this gap in the literature, we introduce a new 15-person synthetic gait abnormality dataset named WeightGait and a lightweight ST-GCN model to demonstrate the feasibility of smaller models with lower computational costs in detecting gait abnormalities in an environment more analogous to the conditions found in an at-home setting. For the task of identifying gait abnormalities in the WeightGait dataset, this method achieves 94.4 % accuracy, an improvement of between 4.9 % and 15.41 % on comparable gait assessment methods.
Original languageEnglish
Article number110076
Pages (from-to)1-10
Number of pages10
JournalComputers in Biology and Medicine
Volume190
DOIs
Publication statusPublished - 30 Mar 2025

Keywords / Materials (for Non-textual outputs)

  • computer vision
  • gait assessment
  • graph networks

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