Publication | Closed Access
A Real-Time Movement Artifact Removal Method for Ambulatory Brain-Computer Interfaces
29
Citations
51
References
2020
Year
EngineeringOnline LearningMotor ControlElectroencephalographySocial SciencesBiomedical Signal AnalysisPattern RecognitionCognitive ElectrophysiologyIndependent Component AnalysisRehabilitation EngineeringNeurorehabilitationAmbulatory Brain-computer InterfacesAssistive TechnologyNeuroimagingRehabilitationComputer ScienceSignal ProcessingMan-machine InterfaceNeural InterfacesNeural InterfaceBrain-computer InterfaceSystems NeuroscienceNeuroengineeringEeg Signal ProcessingEye TrackingNeuroscienceBrain ElectrophysiologyHuman MovementBraincomputer InterfaceBiomedical Signal Processing
Recently, practical brain-computer interfaces (BCIs) have been widely investigated for detecting human intentions in real world. However, performance differences still exist between the laboratory and the real world environments. One of the main reasons for such differences comes from the user's unstable physical states (e.g., human movements are not strictly controlled), which produce unexpected signal artifacts. Hence, to minimize the performance degradation of electroencephalography (EEG)-based BCIs, we present a novel artifact removal method named constrained independent component analysis with online learning (cIOL). The cIOL can find and reject the noise-like components related to human body movements (i.e., movement artifacts) in the EEG signals. To obtain movement information, isolated electrodes are used to block electrical signals from the brain using high-resistance materials. We estimate artifacts with movement information using constrained independent component analysis from EEG signals and then extract artifact-free signals using online learning in each sample. In addition, the cIOL is evaluated by signal processing under 16 different experimental conditions (two types of EEG devices × two BCI paradigms × four different walking speeds). The experimental results show that the cIOL has the highest accuracy in both scalp- and ear-EEG, and has the highest signal-to-noise ratio in scalp-EEG among the state-of-the-art methods, except for the case of steady-state visual evoked potential at 2.0 m/s with superposition problem.
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