We investigated cognitively demanding tasks on patterns of human gait in healthy adults with a deep learning methodology that learns from raw gait data. Age-related differences were analyzed in dual-tasks in a cohort of 69 cognitively healthy adults organized in stratified groups by age. A novel spatio-temporal deep learning methodology was introduced to effectively classify dual-tasks from spatio-temporal raw gait data, obtained from a unique tomography floor sensor. The approach outperformed traditional machine learning approaches. The most favorable classification F-score obtained was of 97.3% in dual-tasks in a young age group experiment for a total of 12 users. The deep machine learning methodology outperformed classical machine learning methodologies by 63.5% in the most favorable case. Finally, a 2D manifold representation was obtained from trained deep learning models' data, to visualize and identify clusters from features learned by the deep learning models. This study demonstrates a novel approach to dual-task research by proposing a data-driven learning methodology with stratified age-groups.
CITATION STYLE
Costilla-Reyes, O., Scully, P., Leroi, I., & Ozanyan, K. B. (2021). Age-Related Differences in Healthy Adults Walking Patterns under a Cognitive Task with Deep Neural Networks. IEEE Sensors Journal, 21(2), 2353–2363. https://doi.org/10.1109/JSEN.2020.3021349
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