ABSTRACT
In this study, a new paradigm containing motor observation, motor execution, and motor imagery was designed to investigate whether motor imagery (MI) and motor execution (ME) of finger gestures can be used to extend commands of practical mBCIs. The subjects were instructed to perform or imagine 30 left and right finger gestures. Hierarchical support vector machine (hSVM) method was applied to classify four tasks (i.e., ME and MI tasks between left and right gestures). The average classification accuracies of motor imagery and execution tasks using fivefold cross-validation were 90.89 ± 9.87% and 74.08 ± 13.42% in first layer and second layer, respectively. The average accuracy of classification of four classes is 83.06 ± 7.29% overall. These results show that performing or imaging finger movements have the potential to extend the commands of the existing BCI, especially for healthy elderly living.
Acknowledgments
This work was partly financially supported in part by National Natural Science Foundation of China (61806146, 61971118, 81901860), National Key Research &Development Program of China (2018YFC1314500), Natural Science Foundation of Tianjin City (18JCYBJC95400), Graduate Research and Innovation Project of Tianjin City(2019YJSS052),Anti-coronavirus research project of Tianjin City (20ZXGBSY00060), Scientific Special Commissioner Foundation of Tianjin City(19JCTPJC56000), the United Arab Emirates University (Start-up grant G00003270 “31T130”), JSPS KAKENHI grants (19K11428) and FY2018 MEXT Private University Research Branding Project.
Disclosure statement
No potential conflict of interest was reported by the authors.