4.7 Article

Generalized Learning Riemannian Space Quantization: A Case Study on Riemannian Manifold of SPD Matrices

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2020.2978514

Keywords

Prototypes; Manifolds; Symmetric matrices; Electroencephalography; Training; Covariance matrices; Generalized learning vector quantization (GLVQ); learning vector quantization (LVQ); Riemannian geodesic distances; Riemannian manifold

Funding

  1. National Natural Science Foundation of China [61803369]
  2. CAS Pioneer Hundred Talents Program [Y8A1220104]
  3. Foundation for Innovative Research Groups of the National Natural Science Foundation of China [61821005]
  4. Frontier Science Research Project of the Chinese Academy of Sciences [QYZDY-SSW-JSC005]
  5. European Commission Horizon 2020 Innovative Training Network SUNDAIL [721463]
  6. EPSRC [EP/L000296/1] Funding Source: UKRI

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The article proposes a new classification method for data points living in curved Riemannian manifolds within the framework of LVQ, which significantly outperforms Euclidean GLVQ in empirical investigations.
Learning vector quantization (LVQ) is a simple and efficient classification method, enjoying great popularity. However, in many classification scenarios, such as electroencephalogram (EEG) classification, the input features are represented by symmetric positive-definite (SPD) matrices that live in a curved manifold rather than vectors that live in the flat Euclidean space. In this article, we propose a new classification method for data points that live in the curved Riemannian manifolds in the framework of LVQ. The proposed method alters generalized LVQ (GLVQ) with the Euclidean distance to the one operating under the appropriate Riemannian metric. We instantiate the proposed method for the Riemannian manifold of SPD matrices equipped with the Riemannian natural metric. Empirical investigations on synthetic data and real-world motor imagery EEG data demonstrate that the performance of the proposed generalized learning Riemannian space quantization can significantly outperform the Euclidean GLVQ, generalized relevance LVQ (GRLVQ), and generalized matrix LVQ (GMLVQ). The proposed method also shows competitive performance to the state-of-the-art methods on the EEG classification of motor imagery tasks.

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