2024
DOI: 10.1186/s12938-024-01228-w
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Enhancing automated lower limb rehabilitation exercise task recognition through multi-sensor data fusion in tele-rehabilitation

Alireza Ettefagh,
Atena Roshan Fekr

Abstract: Background Tele-rehabilitation is the provision of physiotherapy services to individuals in their own homes. Activity recognition plays a crucial role in the realm of automatic tele-rehabilitation. By assessing patient movements, identifying exercises, and providing feedback, these platforms can offer insightful information to clinicians, thereby facilitating an improved plan of care. This study introduces a novel deep learning approach aimed at identifying lower limb rehabilitation exercises. … Show more

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“…By combining data from pressure sensors with vision devices, the overall performance of recognition and assessment modules could be improved. 74 , 93 Figure 3 shows all reviewed papers that focused on activity recognition and assessment with different technologies, subject sample sizes, and postures/exercises. The dashed lines in this figure represent the average values of performance, number of subjects and postures/exercises over all reviewed studies.…”
Section: Discussionmentioning
confidence: 99%
“…By combining data from pressure sensors with vision devices, the overall performance of recognition and assessment modules could be improved. 74 , 93 Figure 3 shows all reviewed papers that focused on activity recognition and assessment with different technologies, subject sample sizes, and postures/exercises. The dashed lines in this figure represent the average values of performance, number of subjects and postures/exercises over all reviewed studies.…”
Section: Discussionmentioning
confidence: 99%