Falls are one of the main causes of disability and death among the elderly. Several inertial-based wearable devices for automatic fall and pre-fall detection have been realized. They use the threshold-based approach above all and their mean lead-time before the impact is about 200-500 ms. The main purpose of the work was to develop a framework for fall risk assessment considering the lower limb surface electromyography. The user's muscle behavior was chosen because it may allow a faster recognition of an imbalance event than the user's kinematic evaluation. Moreover, a machine learning scheme was adopted to overcome the drawbacks of well-known threshold approaches, in which the algorithm parameters have to be set according to the users' specific physical characteristics. Ten kinds of time-domain features, commonly used in the analysis of the lower-limb muscle activity, were investigated and the Markov Random Field based Fisher-Markov selector was used to reduce the signal processing complexity. The supervised classification phase was obtained through a low computational cost and a high classification accuracy Linear Discriminant Analysis. The developed system showed high performance in terms of sensitivity and specificity (about 90%) in controlled conditions, with a mean lead-time before the impact of about 775 ms.

Fall risk evaluation by surface electromyography technology

Leone Alessandro;Rescio Gabriele;Siciliano Pietro
2018

Abstract

Falls are one of the main causes of disability and death among the elderly. Several inertial-based wearable devices for automatic fall and pre-fall detection have been realized. They use the threshold-based approach above all and their mean lead-time before the impact is about 200-500 ms. The main purpose of the work was to develop a framework for fall risk assessment considering the lower limb surface electromyography. The user's muscle behavior was chosen because it may allow a faster recognition of an imbalance event than the user's kinematic evaluation. Moreover, a machine learning scheme was adopted to overcome the drawbacks of well-known threshold approaches, in which the algorithm parameters have to be set according to the users' specific physical characteristics. Ten kinds of time-domain features, commonly used in the analysis of the lower-limb muscle activity, were investigated and the Markov Random Field based Fisher-Markov selector was used to reduce the signal processing complexity. The supervised classification phase was obtained through a low computational cost and a high classification accuracy Linear Discriminant Analysis. The developed system showed high performance in terms of sensitivity and specificity (about 90%) in controlled conditions, with a mean lead-time before the impact of about 775 ms.
2018
Istituto per la Microelettronica e Microsistemi - IMM
Inglese
2017 International Conference on Engineering, Technology and Innovation (ICE/ITMC)
2018-January
1092
1095
9781538607749
http://www.scopus.com/record/display.url?eid=2-s2.0-85047517985&origin=inward
Sì, ma tipo non specificato
27/06/2017-29/06/2017
Madeira
Fall risk assessment
Feature Extraction
Feature Selection
Machine Learning
Surface Electromyography
Wearable Devices
3
none
Leone, Alessandro; Rescio, Gabriele; Siciliano, Pietro
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/345378
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