Performance of Dual-Augmented Lagrangian Method and Common Spatial
Patterns applied in classification of Motor-Imagery BCI
- URL: http://arxiv.org/abs/2010.10359v1
- Date: Tue, 13 Oct 2020 20:50:13 GMT
- Title: Performance of Dual-Augmented Lagrangian Method and Common Spatial
Patterns applied in classification of Motor-Imagery BCI
- Authors: Aleksandar Miladinovi\'c, Milo\v{s} Aj\v{c}evi\'c, Agostino Accardo
- Abstract summary: Motor-imagery based brain-computer interfaces (MI-BCI) have the potential to become ground-breaking technologies for neurorehabilitation.
Due to the noisy nature of the used EEG signal, reliable BCI systems require specialized procedures for features optimization and extraction.
- Score: 68.8204255655161
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Motor-imagery based brain-computer interfaces (MI-BCI) have the potential to
become ground-breaking technologies for neurorehabilitation, the
reestablishment of non-muscular communication and commands for patients
suffering from neuronal disorders and disabilities, but also outside of
clinical practice, for video game control and other entertainment purposes.
However, due to the noisy nature of the used EEG signal, reliable BCI systems
require specialized procedures for features optimization and extraction. This
paper compares the two approaches, the Common Spatial Patterns with Linear
Discriminant Analysis classifier (CSP-LDA), widely used in BCI for extracting
features in Motor Imagery (MI) tasks, and the Dual-Augmented Lagrangian (DAL)
framework with three different regularization methods: group sparsity with row
groups (DAL-GLR), dual-spectrum (DAL-DS) and l1-norm regularization (DAL-L1).
The test has been performed on 7 healthy subjects performing 5 BCI-MI sessions
each. The preliminary results show that DAL-GLR method outperforms standard
CSP-LDA, presenting 6.9% lower misclassification error (p-value = 0.008) and
demonstrate the advantage of DAL framework for MI-BCI.
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