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Recognition of Gait Phases with a Single Knee Electrogoniometer: A Deep Learning Approach

Articolo
Data di Pubblicazione:
2020
Abstract:
Artificial neural networks were satisfactorily implemented for assessing gait events from different walking data. This study aims to propose a novel approach for recognizing gait phases and events, based on deep-learning analysis of only sagittal knee-joint angle measured by a single electrogoniometer per leg. Promising classification/prediction performances have been previously achieved by surface-EMG studies; thus, a further aim is to test if adding electrogoniometer data could improve classification performances of state-of-the-art methods. Gait data are measured in about 10,000 strides from 23 healthy adults, during ground walking. A multi-layer perceptron model is implemented, composed of three hidden layers and a one-dimensional output. Classification/prediction accuracy is tested vs. ground truth represented by foot–floor-contact signals, through samples acquired from subjects not seen during training phase. Average classification-accuracy of 90.6 ± 2.9% and mean absolute value (MAE) of 29.4 ± 13.7 and 99.5 ± 28.9 ms in assessing heel-strike and toe-off timing are achieved in unseen subjects. Improvement of classification-accuracy (four points) and reduction of MAE (at least 35%) are achieved when knee-angle data are used to enhance sEMG-data prediction. Comparison of the two approaches shows as the reduction of set-up complexity implies a worsening of mainly toe-off prediction. Thus, the present electrogoniometer approach is particularly suitable for the classification tasks where only heel-strike event is involved, such as stride recognition, stride-time computation, and identification of toe walking.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Deep learning; Electrogoniometer; EMG sensors; Gait-event detection; Gait-phase classification; Knee angle; Neural networks; Walking
Elenco autori:
Di Nardo, F.; Morbidoni, C.; Cucchiarelli, A.; Fioretti, S.
Autori di Ateneo:
MORBIDONI Christian
Link alla scheda completa:
https://ricerca.unich.it/handle/11564/740621
Link al Full Text:
https://ricerca.unich.it//retrieve/handle/11564/740621/268267/electronics-09-00355.pdf
Pubblicato in:
ELECTRONICS
Journal
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URL

https://www.mdpi.com/2079-9292/9/2/355
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