2017
DOI: 10.1016/j.compbiomed.2017.06.013
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Simultaneous ocular and muscle artifact removal from EEG data by exploiting diverse statistics

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Cited by 45 publications
(27 citation statements)
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“…The two performance measures reflect two complementary aspects of artifact removal and should always be evaluated simultaneously. Indeed, note that the SER can easily be made infinitely high by using the trivial all-zero filter for W in (11), but then the ARR will reduce to 0 dB.…”
Section: Performance Measuresmentioning
confidence: 99%
See 1 more Smart Citation
“…The two performance measures reflect two complementary aspects of artifact removal and should always be evaluated simultaneously. Indeed, note that the SER can easily be made infinitely high by using the trivial all-zero filter for W in (11), but then the ARR will reduce to 0 dB.…”
Section: Performance Measuresmentioning
confidence: 99%
“…On the other hand, Canonical Correlation Analysis (CCA) has become popular for its capability to remove muscle artifacts [9], [10]. A joint approach that targets both ocular and muscle artifacts has recently been proposed in [11]. These Blind Source Separation (BSS) methods are intrinsically semi-automatic, as the artifact components need to be selected for removal after source separation.…”
Section: Introductionmentioning
confidence: 99%
“…The Butterworth filter with a cutoff frequency of 4.0 and 45.0 Hz was used to filter the noise in the EEG data [37]. Then, an independent component analysis (ICA) was employed to eliminate muscular artifacts [38]. In each trial, 60-s continuous EEG signals were selected and split into three segments: 3-s baseline segment, 6-s (10%) validating segment, and 54-s working segment.…”
Section: Feature Extraction and The Target Emotion Classesmentioning
confidence: 99%
“…By using a fast Fourier transformation, the frequency features (60 power features, 16 power difference features) were prepared. In each channel, the power features were computed on four frequency bands, i.e., theta (4-8 Hz), alpha (8-12 Hz), beta (12)(13)(14)(15)(16)(17)(18)(19)(20)(21)(22)(23)(24)(25)(26)(27)(28)(29)(30) and gamma (30)(31)(32)(33)(34)(35)(36)(37)(38)(39)(40)(41)(42)(43)(44)(45). Power difference features were employed to detect the variation in cerebral activity between the left and right cortical areas.…”
Section: Feature Extraction and The Target Emotion Classesmentioning
confidence: 99%
“…To simultaneously extract muscle and ocular artefacts, Chen et al [6] introduced an expanded variant of ICA from one or more datasets. It utilizes information theory principles to divide each set of data into mutually independent sources, while also using a dependency association between sets of data to rely on similar sources across data sets.…”
Section: Introductionmentioning
confidence: 99%