Intra-subject approach for gait-event prediction by neural network interpretation of EMG signals.
Francesco Di NardoChristian MorbidoniGuido MasciaFederica VerdiniSandro FiorettiPublished in: Biomedical engineering online (2020)
The study developed an accurate methodology for classification and prediction of gait events, based on neural network interpretation of intra-subject sEMG data, able to outperform more typical inter-subject approaches. The clinically useful contribution consists in predicting gait events from only EMG signals from a single subject, contributing to remove the need of further sensors for the direct measurement of temporal data.