A discriminative SPD feature learning approach on Riemannian manifolds for EEG classification

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초록

Covariance matrix learning methods have become popular for many classification tasks owing to their ability to capture interesting structures in non-linear data while respecting the Riemannian geometry of the underlying symmetric positive definite (SPD) manifolds. Several deep learning architectures ap-plied to these matrix learning methods have recently been proposed in classification tasks by learning discriminative Euclidean-based embeddings. In this paper, we propose a new Riemannian-based deep learning network to generate more discriminative features for electroencephalogram (EEG) classification. Our key innovation lies in learning the Riemannian barycenter for each class within a Riemannian geo-metric space. The proposed model normalizes the distribution of SPD matrices , learns the center of each class to penalize the distances between the matrix and the corresponding class centers. As a re-sult, our framework can further simultaneously reduce the intra-class distances, enlarge the inter-class distances for the learned features , consistently outperform other state-of-the-art methods on three widely used EEG datasets and the data from our stress-induced experiment in virtual reality. Experimen-tal results demonstrate the superiority of the proposed framework for learning the non-stationary nature of EEG signals due to the robustness of the covariance descriptor and the benefits of considering the barycenters on the Riemannian geometry. & COPY; 2023 Elsevier Ltd. All rights reserved.

키워드

DiscriminativeEEGNon-stationarySPD MatrixRiemannianBarycenterIMMERSIVE VIRTUAL-REALITYBRAINMATRICES
제목
A discriminative SPD feature learning approach on Riemannian manifolds for EEG classification
저자
Kim, Byung HyungChoi, Jin WooLee, HongguJo, Sungho
DOI
10.1016/j.patcog.2023.109751
발행일
2023-11
유형
Article
저널명
Pattern Recognition
143