Authors
Dharmendra Gurve, Denis Delisle-Rodriguez, Teodiano Bastos, Sridhar Krishnan
Publication date
2019/7/23
Conference
2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)
Pages
3083-3086
Publisher
IEEE
Description
In this paper, we aim at finding the smallest set of EEG channels that can ensure highly accurate classification of motor imagery (MI) dataset and maintain the optimum Kappa score. Non-negative matrix factorization (NMF) is used for important and discriminant EEG channel selection. Further, the theory of Riemannian geometry in the manifold of covariance matrices is used for feature extraction. At last, the neighborhood component feature selection (NCFS) algorithm is used to select the small subset of important features from the given set of features. The significance of the proposed work is two-fold: 1) it greatly reduces the time complexity and the amount of overfitting by reducing the unnecessary EEG channels and redundant features. 2) it increases the classification accuracy of the model by selecting only subject-specific EEG channels. The proposed algorithm is tested on BCI Competition IV,2a dataset to validate …
Total citations
2020202120222023202424
Scholar articles
D Gurve, D Delisle-Rodriguez, T Bastos, S Krishnan - 2019 41st Annual International Conference of the IEEE …, 2019