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AutoEncoder Filter Bank Common Spatial Patterns to Decode Motor Imagery From EEG

Nadia Mammone, Cosimo Ieracitano, Hojjat Adeli, Francesco Carlo Morabito

2023IEEE Journal of Biomedical and Health Informatics62 citationsDOI

Abstract

The present paper introduces a novel method, named AutoEncoder-Filter Bank Common Spatial Patterns (AE-FBCSP), to decode imagined movements from electroencephalography (EEG). AE-FBCSP is an extension of the well-established FBCSP and is based on a global (cross-subject) and subsequent transfer learning subject-specific (intra-subject) approach. A multi-way extension of AE-FBCSP is also introduced in this paper. Features are extracted from high-density EEG (64 electrodes), by means of FBCSP, and used to train a custom AE, in an unsupervised way, to project the features into a compressed latent space. Latent features are used to train a supervised classifier (feed forward neural network) to decode the imagined movement. The proposed method was tested using a public dataset of EEGs collected from 109 subjects. The dataset consists of right-hand, left-hand, both hands, both feet motor imagery and resting EEGs. AE-FBCSP was extensively tested in the 3-way classification (right hand vs left hand vs resting) and also in the 2-way, 4-way and 5-way ones, both in cross- and intra-subject analysis. AE-FBCSP outperformed standard FBCSP in a statistically significant way (p > 0.05) and achieved a subject-specific average accuracy of 89.09% in the 3-way classification. The proposed methodology performed subject-specific classification better than other comparable methods in the literature, applied to the same dataset, also in the 2-way, 4-way and 5-way tasks. One of the most interesting outcomes is that AE-FBCSP remarkably increased the number of subjects that responded with a very high accuracy, which is a fundamental requirement for BCI systems to be applied in practice.

Topics & Concepts

AutoencoderComputer scienceArtificial intelligenceElectroencephalographyClassifier (UML)Pattern recognition (psychology)Motor imagerySpeech recognitionBrain–computer interfaceFilter bankDeep learningFilter (signal processing)Computer visionPsychologyPsychiatryEEG and Brain-Computer InterfacesNeuroscience and Neural EngineeringGaze Tracking and Assistive Technology
AutoEncoder Filter Bank Common Spatial Patterns to Decode Motor Imagery From EEG | Litcius