4.5 Article

Detection of motor imagery based on short-term entropy of time-frequency representations

Journal

BIOMEDICAL ENGINEERING ONLINE
Volume 22, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s12938-023-01102-1

Keywords

Brain-computer interface; Electroencephalography; Information entropy; Motor imagery; Movement detection; Time-frequency representations

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This paper compares different time-frequency representations (TFR) and their entropies for motor imagery control signals in EEG data. The results show that using TFR-based entropy features can achieve higher accuracies (up to 99.87%) compared to regular amplitude features (up to 85.91%), indicating an improvement in the ability to detect motor imagery.
BackgroundMotor imagery is a cognitive process of imagining a performance of a motor task without employing the actual movement of muscles. It is often used in rehabilitation and utilized in assistive technologies to control a brain-computer interface (BCI). This paper provides a comparison of different time-frequency representations (TFR) and their Renyi and Shannon entropies for sensorimotor rhythm (SMR) based motor imagery control signals in electroencephalographic (EEG) data. The motor imagery task was guided by visual guidance, visual and vibrotactile (somatosensory) guidance or visual cue only.ResultsWhen using TFR-based entropy features as an input for classification of different interaction intentions, higher accuracies were achieved (up to 99.87%) in comparison to regular time-series amplitude features (for which accuracy was up to 85.91%), which is an increase when compared to existing methods. In particular, the highest accuracy was achieved for the classification of the motor imagery versus the baseline (rest state) when using Shannon entropy with Reassigned Pseudo Wigner-Ville time-frequency representation.ConclusionsOur findings suggest that the quantity of useful classifiable motor imagery information (entropy output) changes during the period of motor imagery in comparison to baseline period; as a result, there is an increase in the accuracy and F1 score of classification when using entropy features in comparison to the accuracy and the F1 of classification when using amplitude features, hence, it is manifested as an improvement of the ability to detect motor imagery.

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