2022
DOI: 10.3389/fnhum.2022.1068165
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Classification of motor imagery electroencephalogram signals by using adaptive cross-subject transfer learning

Abstract: IntroductionElectroencephalogram (EEG)-based motor imagery (MI) classification is an important aspect in brain-computer interfaces (BCIs), which bridges between neural system and computer devices decoding brain signals into recognizable machine commands. However, due to the small number of training samples of MI electroencephalogram (MI-EEG) for a single subject and the great individual differences of MI-EEG among different subjects, the generalization and accuracy of the model on the specific MI task may be p… Show more

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Cited by 2 publications
(2 citation statements)
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“…In 29 , generative adversarial networks and transfer learning were used for subject-independent fatigue classification with high accuracy, up to 91.63%. Many studies have been devoted to cross-subject classification of motor-imagery tasks 30 , with the most successful utilizing transfer learning 31,32 . The study by 17 performed cross-subjects classification of verbal and math cognitive tasks using EEG power features with an accuracy of 74.21%.…”
Section: Discussionmentioning
confidence: 99%
“…In 29 , generative adversarial networks and transfer learning were used for subject-independent fatigue classification with high accuracy, up to 91.63%. Many studies have been devoted to cross-subject classification of motor-imagery tasks 30 , with the most successful utilizing transfer learning 31,32 . The study by 17 performed cross-subjects classification of verbal and math cognitive tasks using EEG power features with an accuracy of 74.21%.…”
Section: Discussionmentioning
confidence: 99%
“…To mitigate the burden of calibration, transfer learning [18], [19] and domain adaptation [20], [21] algorithms have been rigorously studied. Despite these advancements, the need for calibration still remains.…”
Section: Introductionmentioning
confidence: 99%