Data di Pubblicazione:
2015
Abstract:
Fall events are one of the main causes of injuries among the elderly. The purpose of this study has been to identify a computational framework for the real-time and automatic detection of the fall risk, allowing the fast adoption of properly intervention strategies, to reduce injuries and traumas due to the fall. A wearable, wireless and minimally invasive surface Electromyography (EMG)-based system has been used to measure four lower-limb muscles activities. Eleven young healthy subjects have simulated several fall events (through a movable platform) and normal Activities of Daily Living (ADLs) and their patterns have been analysed. Highly discriminative features extracted within the EMG signals for the pre impact fall evaluation have been explored and a threshold-based approach has been adopted, assuring the real-time functioning. The threshold level for each feature has been set to distinguish an instability condition from normal activities. The proposed system seems able to recognize all falls with an average lead-time of 840ms before the impact, in simulated and controlled fall conditions.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Electromyography sensors; Fall risk evaluation; Features extraction; Wearable devices
Elenco autori:
Caroppo, Andrea; Rescio, Gabriele; Casino, Flavio; Leone, Alessandro; Siciliano, PIETRO ALEARDO
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