Skip to main content
Kent Academic Repository

Effect of Gait Speed on Trajectory Prediction Using Deep Learning Models for Exoskeleton Applications

Kolaghassi, Rania, Marcelli, Gianluca, Sirlantzis, Konstantinos (2023) Effect of Gait Speed on Trajectory Prediction Using Deep Learning Models for Exoskeleton Applications. Sensors, 23 (12). Article Number 5687. ISSN 1424-8220. (doi:10.3390/s23125687) (KAR id:101987)

Abstract

Gait speed is an important biomechanical determinant of gait patterns, with joint kinematics being influenced by it. This study aims to explore the effectiveness of fully connected neural networks (FCNNs), with a potential application for exoskeleton control, in predicting gait trajectories at varying speeds (specifically, hip, knee, and ankle angles in the sagittal plane for both limbs). This study is based on a dataset from 22 healthy adults walking at 28 different speeds ranging from 0.5 to 1.85 m/s. Four FCNNs (a generalised-speed model, a low-speed model, a high-speed model, and a low-high-speed model) are evaluated to assess their predictive performance on gait speeds included in the training speed range and on speeds that have been excluded from it. The evaluation involves short-term (one-step-ahead) predictions and long-term (200-time-step) recursive predictions. The results show that the performance of the low- and high-speed models, measured using the mean absolute error (MAE), decreased by approximately 43.7% to 90.7% when tested on the excluded speeds. Meanwhile, when tested on the excluded medium speeds, the performance of the low-high-speed model improved by 2.8% for short-term predictions and 9.8% for long-term predictions. These findings suggest that FCNNs are capable of interpolating to speeds within the maximum and minimum training speed ranges, even if not explicitly trained on those speeds. However, their predictive performance decreases for gaits at speeds beyond or below the maximum and minimum training speed ranges.

Item Type: Article
DOI/Identification number: 10.3390/s23125687
Uncontrolled keywords: exoskeletons, gait, extrapolation, artificial intelligence, kinematics, deep learning, gait speeds, prediction, forecasting
Subjects: T Technology > TA Engineering (General). Civil engineering (General)
Divisions: Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Engineering and Digital Arts
SWORD Depositor: JISC Publications Router
Depositing User: JISC Publications Router
Date Deposited: 14 Jul 2023 14:07 UTC
Last Modified: 05 Nov 2024 13:08 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/101987 (The current URI for this page, for reference purposes)

University of Kent Author Information

  • Depositors only (login required):

Total unique views for this document in KAR since July 2020. For more details click on the image.