4.6 Article

Learning architecture for the recognition of walking and prediction of gait period using wearable sensors

Journal

NEUROCOMPUTING
Volume 470, Issue -, Pages 1-10

Publisher

ELSEVIER
DOI: 10.1016/j.neucom.2021.10.044

Keywords

Activity recognition; Deep learning; Learning architectures; Wearable sensors

Funding

  1. Royal Society Research Grants [RGS/R2/192346]
  2. EPSRC [EP/M026388/1]
  3. EPSRC [EP/M026388/1] Funding Source: UKRI

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This study introduces a novel learning architecture for the recognition and prediction of walking activity and gait period using wearable sensors. The architecture combines CNN and PIG methods for recognition and prediction, and achieves high accuracy through adaptive combination. Experimental results demonstrate the effectiveness of this approach in accurate recognition and prediction of walking activity and gait period.
This work presents a novel learning architecture for the recognition and prediction of walking activity and gait period, respectively, using wearable sensors. This approach is composed of a Convolutional Neural Network (CNN), a Predicted Information Gain (PIG) module and an adaptive combination of infor-mation sources. The CNN provides the recognition of walking and gait periods. This information is used by the proposed PIG method to estimate the next most probable gait period along the gait cycle. The out-puts from the CNN and PIG modules are combined by a proposed adaptive process, which relies on data from the source that shows to be more reliable. This adaptive combination ensures that the learning architecture provides accurate recognition and prediction of walking activity and gait periods over time. The learning architecture uses data from an array of three inertial measurement units attached to the lower limbs of individuals. The validation of this work is performed by the recognition of level-ground walking, ramp ascent and ramp descent, and the prediction of gait periods. The recognition of walking activity and gait period is 100% and 98.63%, respectively, when the CNN model is employed alone. The recognition of gait periods achieves a 99.9% accuracy, when the PIG method and adaptive combination are also used. These results demonstrate the benefit of having a system capable of predicting or antici-pating the next information or event over time. Overall, the learning architecture offers an alternative approach for accurate activity recognition, which is essential for the development of wearable robots cap-able of reliably and safely assisting humans in activities of daily living. (c) 2021 Elsevier B.V. All rights reserved.

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