Motor imagery EEG classification based on decision tree framework and Riemannian geometry

S Guan, K Zhao, S Yang�- Computational intelligence and�…, 2019 - Wiley Online Library
S Guan, K Zhao, S Yang
Computational intelligence and neuroscience, 2019Wiley Online Library
This paper proposes a novel classification framework and a novel data reduction method to
distinguish multiclass motor imagery (MI) electroencephalography (EEG) for brain computer
interface (BCI) based on the manifold of covariance matrices in a Riemannian perspective.
For method 1, a subject‐specific decision tree (SSDT) framework with filter geodesic
minimum distance to Riemannian mean (FGMDRM) is designed to identify MI tasks and
reduce the classification error in the nonseparable region of FGMDRM. Method 2 includes a�…
This paper proposes a novel classification framework and a novel data reduction method to distinguish multiclass motor imagery (MI) electroencephalography (EEG) for brain computer interface (BCI) based on the manifold of covariance matrices in a Riemannian perspective. For method 1, a subject‐specific decision tree (SSDT) framework with filter geodesic minimum distance to Riemannian mean (FGMDRM) is designed to identify MI tasks and reduce the classification error in the nonseparable region of FGMDRM. Method 2 includes a feature extraction algorithm and a classification algorithm. The feature extraction algorithm combines semisupervised joint mutual information (semi‐JMI) with general discriminate analysis (GDA), namely, SJGDA, to reduce the dimension of vectors in the Riemannian tangent plane. And the classification algorithm replaces the FGMDRM in method 1 with k‐nearest neighbor (KNN), named SSDT‐KNN. By applying method 2 on BCI competition IV dataset 2a, the kappa value has been improved from 0.57 to 0.607 compared to the winner of dataset 2a. And method 2 also obtains high recognition rate on the other two datasets.
Wiley Online Library