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Recognition of Daily Activities in Adults With Wearable Inertial Sensors: Deep Learning Methods Study.

Alberto de Ramón-FernándezDaniel Ruiz-FernandezMiguel García-JaénJuan Manuel Cortell-Tormo
Published in: JMIR medical informatics (2024)
The DL models implemented have demonstrated solid performance, indicating an effective ability to identify and classify various daily activities related to the shoulder and lumbar region. These results were achieved with minimal sensorization-being noninvasive and practically imperceptible to the user-which does not affect their daily routine and promotes acceptance and adherence to continuous monitoring, thus improving the reliability of the data collected. This research has the potential to have a significant impact on the clinical evaluation and rehabilitation of patients with movement limitations, by providing an objective and advanced tool to detect key movement patterns and joint dysfunctions.
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