EEG artifact removal—state-of-the-art and guidelines

This paper presents an extensive review on the artifact removal algorithms used to remove the main sources of interference encountered in the electroencephalogram (EEG), specifically ocular, muscular and cardiac artifacts. We first introduce background knowledge on the characteristics of EEG activity, of the artifacts and of the EEG measurement model. Then, we present algorithms commonly employed in the literature and describe their key features. Lastly, principally on the basis of the results provided by various researchers, but also supported by our own experience, we compare the state-of-the-art methods in terms of reported performance, and provide guidelines on how to choose a suitable artifact removal algorithm for a given scenario. With this review we have concluded that, without prior knowledge of the recorded EEG signal or the contaminants, the safest approach is to correct the measured EEG using independent component analysis-to be precise, an algorithm based on second-order statistics such as second-order blind identification (SOBI). Other effective alternatives include extended information maximization (InfoMax) and an adaptive mixture of independent component analyzers (AMICA), based on higher order statistics. All of these algorithms have proved particularly effective with simulations and, more importantly, with data collected in controlled recording conditions. Moreover, whenever prior knowledge is available, then a constrained form of the chosen method should be used in order to incorporate such additional information. Finally, since which algorithm is the best performing is highly dependent on the type of the EEG signal, the artifacts and the signal to contaminant ratio, we believe that the optimal method for removing artifacts from the EEG consists in combining more than one algorithm to correct the signal using multiple processing stages, even though this is an option largely unexplored by researchers in the area.

[1]  V. Krishnaveni,et al.  Removal of ocular artifacts from EEG using adaptive thresholding of wavelet coefficients , 2006, Journal of neural engineering.

[2]  Murielle Kirkove,et al.  Comparative evaluation of existing and new methods for correcting ocular artifacts in electroencephalographic recordings , 2014, Signal Process..

[3]  C. Joyce,et al.  Automatic removal of eye movement and blink artifacts from EEG data using blind component separation. , 2004, Psychophysiology.

[4]  Steve McLaughlin,et al.  Development of EMD-Based Denoising Methods Inspired by Wavelet Thresholding , 2009, IEEE Transactions on Signal Processing.

[5]  Trieu H. Pham,et al.  A test of four EOG correction methods using an improved validation technique. , 2011, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[6]  Fabian J. Theis,et al.  Sparse Component Analysis: a New Tool for Data Mining , 2004 .

[7]  Christian Sander,et al.  ICA-based muscle artefact correction of EEG data: What is muscle and what is brain? Comment on McMenamin et al. , 2011, NeuroImage.

[8]  Heinrich Garn,et al.  Removing cardiac interference from the electroencephalogram using a modified Pan-Tompkins algorithm and linear regression , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[9]  Hans Knutsson,et al.  Exploratory fMRI Analysis by Autocorrelation Maximization , 2002, NeuroImage.

[10]  Panagiotis D. Bamidis,et al.  REG-ICA: A hybrid methodology combining Blind Source Separation and regression techniques for the rejection of ocular artifacts , 2011, Biomed. Signal Process. Control..

[11]  R. B. Reilly,et al.  FASTER: Fully Automated Statistical Thresholding for EEG artifact Rejection , 2010, Journal of Neuroscience Methods.

[12]  R. Ward,et al.  EMG and EOG artifacts in brain computer interface systems: A survey , 2007, Clinical Neurophysiology.

[13]  Scott Makeig,et al.  Information-based modeling of event-related brain dynamics. , 2006, Progress in brain research.

[14]  I. Daubechies,et al.  Synchrosqueezed wavelet transforms: An empirical mode decomposition-like tool , 2011 .

[15]  Patrick Berg,et al.  Artifact Correction of the Ongoing EEG Using Spatial Filters Based on Artifact and Brain Signal Topographies , 2002, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[16]  T. Gasser,et al.  The deleterious effect of ocular artefacts on the quantitative EEG, and a remedy , 2005, European Archives of Psychiatry and Clinical Neuroscience.

[17]  Norden E. Huang,et al.  A review on Hilbert‐Huang transform: Method and its applications to geophysical studies , 2008 .

[18]  Miguel Angel Mañanas,et al.  A comparative study of automatic techniques for ocular artifact reduction in spontaneous EEG signals based on clinical target variables: A simulation case , 2008, Comput. Biol. Medicine.

[19]  Pham Trieu,et al.  Empirically Validating Fully Automated EOG Artifact Correction using Independent Components Analysis , 2012 .

[20]  Wim Van Paesschen,et al.  Canonical Correlation Analysis Applied to Remove Muscle Artifacts From the Electroencephalogram , 2006, IEEE Transactions on Biomedical Engineering.

[21]  P. Berg,et al.  Dipole models of eye movements and blinks. , 1991, Electroencephalography and clinical neurophysiology.

[22]  Daniel P. Ferris,et al.  Removal of movement artifact from high-density EEG recorded during walking and running. , 2010, Journal of neurophysiology.

[23]  Danilo P. Mandic,et al.  Empirical Mode Decomposition-Based Time-Frequency Analysis of Multivariate Signals: The Power of Adaptive Data Analysis , 2013, IEEE Signal Processing Magazine.

[24]  Uwe Pietrzyk,et al.  Integration of Amplitude and Phase Statistics for Complete Artifact Removal in Independent Components of Neuromagnetic Recordings , 2008, IEEE Transactions on Biomedical Engineering.

[25]  R. Oostenveld,et al.  Independent EEG Sources Are Dipolar , 2012, PloS one.

[26]  Richard M. Everson,et al.  Independent Components Analysis , 2000, Artificial Neural Networks in Biomedicine.

[27]  R. Barry,et al.  EOG correction: a comparison of four methods. , 2005, Psychophysiology.

[28]  Matthew T. Sutherland,et al.  Validation of SOBI components from high-density EEG , 2005, NeuroImage.

[29]  E Donchin,et al.  A new method for off-line removal of ocular artifact. , 1983, Electroencephalography and clinical neurophysiology.

[30]  C Marque,et al.  Adaptive filtering for ECG rejection from surface EMG recordings. , 2005, Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology.

[31]  C. Fortgens,et al.  Removal of eye movement and ECG artifacts from the non-cephalic reference EEG. , 1983, Electroencephalography and clinical neurophysiology.

[32]  Aneta Stefanovska,et al.  Nonlinear mode decomposition: a noise-robust, adaptive decomposition method. , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.

[33]  Richard J. Davidson,et al.  Validation of ICA-based myogenic artifact correction for scalp and source-localized EEG , 2010, NeuroImage.

[34]  J. Wolpaw,et al.  EMG contamination of EEG: spectral and topographical characteristics , 2003, Clinical Neurophysiology.

[35]  Joachim Mocks,et al.  Correcting ocular artifacts in the EEG: A comparison of several methods , 1989 .

[36]  Erkki Oja,et al.  Independent component approach to the analysis of EEG and MEG recordings , 2000, IEEE Transactions on Biomedical Engineering.

[37]  Tzyy-Ping Jung,et al.  Independent Component Analysis of Electroencephalographic Data , 1995, NIPS.

[38]  Mercedes Atienza,et al.  Muscle Artifact Removal from Human Sleep EEG by Using Independent Component Analysis , 2008, Annals of Biomedical Engineering.

[39]  I. Johnstone,et al.  Adapting to Unknown Smoothness via Wavelet Shrinkage , 1995 .

[40]  Andreas Ziehe,et al.  TDSEP { an e(cid:14)cient algorithm for blind separation using time structure , 1998 .

[41]  Christian Jutten,et al.  A Nonlinear Bayesian Filtering Framework for ECG Denoising , 2007, IEEE Transactions on Biomedical Engineering.

[42]  Frédéric Grouiller,et al.  A comparative study of different artefact removal algorithms for EEG signals acquired during functional MRI , 2007, NeuroImage.

[43]  Armando Malanda,et al.  Independent Component Analysis as a Tool to Eliminate Artifacts in EEG: A Quantitative Study , 2003, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[44]  Lotfi Senhadji,et al.  Turning Tangent Empirical Mode Decomposition: A Framework for Mono- and Multivariate Signals , 2011, IEEE Transactions on Signal Processing.

[45]  Elmar Wolfgang Lang,et al.  Greedy KPCA in Biomedical Signal Processing , 2007, ICANN.

[46]  J. Sarvas Basic mathematical and electromagnetic concepts of the biomagnetic inverse problem. , 1987, Physics in medicine and biology.

[47]  Wei Lu,et al.  Constrained Independent Component Analysis , 2000, NIPS.

[48]  Jeffrey S. Maxwell,et al.  Validation of regression-based myogenic correction techniques for scalp and source-localized EEG. , 2009, Psychophysiology.

[49]  A. Tomé,et al.  On the use of clustering and local singular spectrum analysis to remove ocular artifacts from electroencephalograms , 2005, Proceedings. 2005 IEEE International Joint Conference on Neural Networks, 2005..

[50]  Slawomir J. Nasuto,et al.  Automatic Artefact Removal from Event-related Potentials via Clustering , 2007, J. VLSI Signal Process..

[51]  S. Makeig,et al.  Imaging human EEG dynamics using independent component analysis , 2006, Neuroscience & Biobehavioral Reviews.

[52]  Richard J. Davidson,et al.  Electromyogenic Artifacts and Electroencephalographic Inferences , 2009, Brain Topography.

[53]  Terrence J. Sejnowski,et al.  Enhanced detection of artifacts in EEG data using higher-order statistics and independent component analysis , 2007, NeuroImage.

[54]  Lotfi Senhadji,et al.  Removal of muscle artifact from EEG data: comparison between stochastic (ICA and CCA) and deterministic (EMD and wavelet-based) approaches , 2012, EURASIP J. Adv. Signal Process..

[55]  Hasan Ayaz,et al.  A Methodology for Validating Artifact Removal Techniques for Physiological Signals , 2012, IEEE Transactions on Information Technology in Biomedicine.

[56]  M. Scherg,et al.  Spatially constrained independent component analysis for artifact correction in EEG and MEG , 2001, NeuroImage.

[57]  Abbas Erfanian,et al.  A fully automatic ocular artifact suppression from EEG data using higher order statistics: improved performance by wavelet analysis. , 2010, Medical engineering & physics.

[58]  Aapo Hyvärinen,et al.  A Fast Fixed-Point Algorithm for Independent Component Analysis , 1997, Neural Computation.

[59]  G. Pfurtscheller,et al.  A fully automated correction method of EOG artifacts in EEG recordings , 2007, Clinical Neurophysiology.

[60]  Dirk Hagemann,et al.  The effects of ocular artifacts on (lateralized) broadband power in the EEG , 2001, Clinical Neurophysiology.

[61]  Sven Hoffmann,et al.  The Correction of Eye Blink Artefacts in the EEG: A Comparison of Two Prominent Methods , 2008, PloS one.

[62]  Seán F. McLoone,et al.  The Use of Ensemble Empirical Mode Decomposition With Canonical Correlation Analysis as a Novel Artifact Removal Technique , 2013, IEEE Transactions on Biomedical Engineering.

[63]  Wim Van Paesschen,et al.  Modeling common dynamics in multichannel signals with applications to artifact and background removal in EEG recordings , 2005, IEEE Transactions on Biomedical Engineering.

[64]  W. De Clercq,et al.  Automatic Removal of Ocular Artifacts in the EEG without an EOG Reference Channel , 2006, Proceedings of the 7th Nordic Signal Processing Symposium - NORSIG 2006.

[65]  R. Barry,et al.  Removal of ocular artifact from the EEG: a review , 2000, Neurophysiologie Clinique/Clinical Neurophysiology.

[66]  Michael Unser,et al.  A review of wavelets in biomedical applications , 1996, Proc. IEEE.

[67]  Christopher J. James,et al.  On Semi-Blind Source Separation Using Spatial Constraints With Applications in EEG Analysis , 2006, IEEE Transactions on Biomedical Engineering.

[68]  Yuanqing Li,et al.  Blind estimation of channel parameters and source components for EEG signals: a sparse factorization approach , 2006, IEEE Transactions on Neural Networks.

[69]  Christopher J. James,et al.  Employing spatially constrained ICA and wavelet denoising, for automatic removal of artifacts from multichannel EEG data , 2012, Signal Process..

[70]  S. Smith,et al.  EEG in neurological conditions other than epilepsy: when does it help, what does it add? , 2005, Journal of Neurology, Neurosurgery & Psychiatry.

[71]  Roberto Hornero,et al.  Artifact Removal in Magnetoencephalogram Background Activity With Independent Component Analysis , 2007, IEEE Transactions on Biomedical Engineering.

[72]  Bart Vanrumste,et al.  Review on solving the forward problem in EEG source analysis , 2007, Journal of NeuroEngineering and Rehabilitation.

[73]  Norden E. Huang,et al.  Ensemble Empirical Mode Decomposition: a Noise-Assisted Data Analysis Method , 2009, Adv. Data Sci. Adapt. Anal..

[74]  E. Oja,et al.  BSS and ICA in Neuroinformatics: From Current Practices to Open Challenges , 2008, IEEE Reviews in Biomedical Engineering.

[75]  R. Scherer,et al.  On the Automated Removal of Artifacts Related to Head Movement From the EEG , 2013, IEEE Transactions on Neural Systems and Rehabilitation Engineering.

[76]  M Nakamura,et al.  Elimination of EKG artifacts from EEG records: a new method of non-cephalic referential EEG recording. , 1987, Electroencephalography and clinical neurophysiology.

[77]  P Berg,et al.  Dipole modelling of eye activity and its application to the removal of eye artefacts from the EEG and MEG. , 1991, Clinical physics and physiological measurement : an official journal of the Hospital Physicists' Association, Deutsche Gesellschaft fur Medizinische Physik and the European Federation of Organisations for Medical Physics.

[78]  Fernando Seoane,et al.  Elimination of ECG Artefacts in Foetal EEG Using Ensemble Average Subtraction and Wavelet Denoising Methods : A Simulation , 2014 .

[79]  R. Quiroga,et al.  Stationarity of the EEG series , 1995 .

[80]  R. Barry,et al.  EOG correction of blinks with saccade coefficients: a test and revision of the aligned-artefact average solution , 2000, Clinical Neurophysiology.

[81]  Pierre Comon,et al.  Handbook of Blind Source Separation: Independent Component Analysis and Applications , 2010 .

[82]  A. Schlögl,et al.  Artifact Processing in Computerized Analysis of Sleep EEG – A Review , 1999, Neuropsychobiology.

[83]  Francesco Carlo Morabito,et al.  Wavelet-ICA methodology for efficient artifact removal from Electroencephalographic recordings , 2007, 2007 International Joint Conference on Neural Networks.

[84]  Toshihisa Tanaka,et al.  Separation of EOG artifacts from EEG signals using bivariate EMD , 2010, 2010 IEEE International Conference on Acoustics, Speech and Signal Processing.

[85]  Pierre Comon,et al.  Independent component analysis, A new concept? , 1994, Signal Process..

[86]  A. Vergult,et al.  Removing Artifacts and Background Activity in Multichannel Electroencephalograms by Enhancing Common Activity , 2005, 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference.

[87]  Kenneth A. Loparo,et al.  Automated Removal of EKG Artifact From EEG Data Using Independent Component Analysis and Continuous Wavelet Transformation , 2014, IEEE Transactions on Biomedical Engineering.

[88]  Max E. Valentinuzzi,et al.  Artifact removal from EEG signals using adaptive filters in cascade , 2007 .

[89]  Bao-Liang Lu,et al.  A robust principal component analysis algorithm for EEG-based vigilance estimation , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[90]  Wei Lu,et al.  ICA with Reference , 2006, Neurocomputing.

[91]  Terrence J. Sejnowski,et al.  Independent Component Analysis of Simulated ERP Data , 2000 .

[92]  Christian Jutten,et al.  Overview of source separation applications , 2010 .

[93]  Thierry Dutoit,et al.  Cancelling ECG Artifacts in EEG Using a Modified Independent Component Analysis Approach , 2008, EURASIP J. Adv. Signal Process..

[94]  N Jon Shah,et al.  Ocular and cardiac artifact rejection for real-time analysis in MEG , 2014, Journal of Neuroscience Methods.

[95]  Terrence J. Sejnowski,et al.  Independent Component Analysis Using an Extended Infomax Algorithm for Mixed Subgaussian and Supergaussian Sources , 1999, Neural Computation.

[96]  Anton Amann,et al.  The role of methane in mammalian physiology—is it a gasotransmitter? , 2015, Journal of breath research.

[97]  Sabine Van Huffel,et al.  Source Separation From Single-Channel Recordings by Combining Empirical-Mode Decomposition and Independent Component Analysis , 2010, IEEE Transactions on Biomedical Engineering.

[98]  Lotfi Senhadji,et al.  ICA-based EEG denoising: a comparative analysis of fifteen methods , 2012 .

[99]  Jing Hu,et al.  Denoising Nonlinear Time Series by Adaptive Filtering and Wavelet Shrinkage: A Comparison , 2010, IEEE Signal Processing Letters.

[100]  Roberto Hornero,et al.  Quantitative Evaluation of Artifact Removal in Real Magnetoencephalogram Signals with Blind Source Separation , 2011, Annals of Biomedical Engineering.

[101]  Richard J. Davidson,et al.  Electromyogenic artifacts and electroencephalographic inferences revisited , 2011, NeuroImage.

[102]  J-P Lanquart,et al.  QRS artifact elimination on full night sleep EEG. , 2006, Medical engineering & physics.

[103]  Barak A. Pearlmutter,et al.  Blind source separation of multichannel neuromagnetic responses , 2000, Neurocomputing.

[104]  S. Romero,et al.  Ocular Reduction in EEG Signals Based on Adaptive Filtering, Regression and Blind Source Separation , 2008, Annals of Biomedical Engineering.

[105]  R. Liu,et al.  AMUSE: a new blind identification algorithm , 1990, IEEE International Symposium on Circuits and Systems.

[106]  Arnaud Delorme,et al.  EEGLAB: an open source toolbox for analysis of single-trial EEG dynamics including independent component analysis , 2004, Journal of Neuroscience Methods.

[107]  Joep J. M. Kierkels,et al.  A model-based objective evaluation of eye movement correction in EEG recordings , 2006, IEEE Transactions on Biomedical Engineering.

[108]  Terrence J. Sejnowski,et al.  An Information-Maximization Approach to Blind Separation and Blind Deconvolution , 1995, Neural Computation.

[109]  A. Mognon,et al.  ADJUST: An automatic EEG artifact detector based on the joint use of spatial and temporal features. , 2011, Psychophysiology.

[110]  V. Sinha,et al.  Event-related potential: An overview , 2009, Industrial psychiatry journal.

[111]  Barak A. Pearlmutter,et al.  Independent Components of Magnetoencephalography: Single-Trial Response Onset Times , 2002, NeuroImage.

[112]  Fabrice Wendling,et al.  A Physiologically Plausible Spatio-Temporal Model for EEG Signals Recorded With Intracerebral Electrodes in Human Partial Epilepsy , 2007, IEEE Transactions on Biomedical Engineering.

[113]  Clay B. Holroyd,et al.  Detection of synchronized oscillations in the electroencephalogram: an evaluation of methods. , 2004, Psychophysiology.

[114]  Bart Vanrumste,et al.  Journal of Neuroengineering and Rehabilitation Open Access Review on Solving the Inverse Problem in Eeg Source Analysis , 2022 .

[115]  E. Oja,et al.  Independent Component Analysis , 2013 .

[116]  Andrzej Cichocki,et al.  Blind noise reduction for multisensory signals using ICA and subspace filtering, with application to EEG analysis , 2002, Biological Cybernetics.

[117]  G. Zouridakis,et al.  Single-trial evoked potential estimation: Comparison between independent component analysis and wavelet denoising , 2007, Clinical Neurophysiology.

[118]  Tomás Ward,et al.  Artifact Removal in Physiological Signals—Practices and Possibilities , 2012, IEEE Transactions on Information Technology in Biomedicine.

[119]  M. van de Velde,et al.  Signal validation in electroencephalography research , 2000 .

[120]  Erkki Oja,et al.  Independent component analysis: algorithms and applications , 2000, Neural Networks.

[121]  Barak A. Pearlmutter,et al.  Independent Components of Magnetoencephalography: Localization , 2002, Neural Computation.

[122]  Homer Nazeran,et al.  Wavelet-based EEG denoising for automatic sleep stage classification , 2011, CONIELECOMP 2011, 21st International Conference on Electrical Communications and Computers.

[123]  V. A. Makarov,et al.  Recovering EEG brain signals: Artifact suppression with wavelet enhanced independent component analysis , 2006, Journal of Neuroscience Methods.

[124]  A. Boxtel,et al.  Optimal signal bandwidth for the recording of surface EMG activity of facial, jaw, oral, and neck muscles. , 2001 .

[125]  G. Gratton Dealing with artifacts: The EOG contamination of the event-related brain potential , 1998 .

[126]  Dezhong Yao,et al.  A novel method based on realistic head model for EEG denoising , 2006, Comput. Methods Programs Biomed..

[127]  T. Lagerlund,et al.  Spatial filtering of multichannel electroencephalographic recordings through principal component analysis by singular value decomposition. , 1997, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[128]  Soo-Young Lee Blind Source Separation and Independent Component Analysis: A Review , 2005 .

[129]  Matthew T. Sutherland,et al.  Recovery of correlated neuronal sources from EEG: The good and bad ways of using SOBI , 2005, NeuroImage.

[130]  R J Ilmoniemi,et al.  Spatiotemporal activity of a cortical network for processing visual motion revealed by MEG and fMRI. , 1999, Journal of neurophysiology.

[131]  E A Clancy,et al.  Estimation and application of EMG amplitude during dynamic contractions. , 2001, IEEE engineering in medicine and biology magazine : the quarterly magazine of the Engineering in Medicine & Biology Society.

[132]  T. Sejnowski,et al.  Removal of eye activity artifacts from visual event-related potentials in normal and clinical subjects , 2000, Clinical Neurophysiology.

[133]  N. Huang,et al.  The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis , 1998, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences.

[134]  P Berg,et al.  A multiple source approach to the correction of eye artifacts. , 1994, Electroencephalography and clinical neurophysiology.

[135]  Björn Eskofier,et al.  Comparison of the AMICA and the InfoMax algorithm for the reduction of electromyogenic artifacts in EEG data , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[136]  Domenico Prattichizzo,et al.  Application of Kalman Filter to Remove TMS-Induced Artifacts from EEG Recordings , 2008, IEEE Transactions on Control Systems Technology.

[137]  Tomasz M. Rutkowski,et al.  Ocular Artifacts Removal from EEG Using EMD , 2008 .

[138]  S. Muthukumaraswamy High-frequency brain activity and muscle artifacts in MEG/EEG: a review and recommendations , 2013, Front. Hum. Neurosci..

[139]  Christopher J. James,et al.  Temporally constrained ICA: an application to artifact rejection in electromagnetic brain signal analysis , 2003, IEEE Transactions on Biomedical Engineering.

[140]  Mohamed Moshrefi-Torbati,et al.  Signal processing techniques applied to human sleep EEG signals - A review , 2014, Biomed. Signal Process. Control..

[141]  Rémi Gribonval,et al.  A survey of Sparse Component Analysis for blind source separation: principles, perspectives, and new challenges , 2006, ESANN.

[142]  S P Fitzgibbon,et al.  Removal of EEG Noise and Artifact Using Blind Source Separation , 2007, Journal of clinical neurophysiology : official publication of the American Electroencephalographic Society.

[143]  Ali H. Sayed,et al.  Adaptive Filters , 2008 .

[144]  Aapo Hyvärinen,et al.  Fast and robust fixed-point algorithms for independent component analysis , 1999, IEEE Trans. Neural Networks.

[145]  S. Debener,et al.  Towards a truly mobile auditory brain-computer interface: exploring the P300 to take away. , 2014, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[146]  Wei Lu,et al.  Approach and applications of constrained ICA , 2005, IEEE Transactions on Neural Networks.

[147]  Kevin Warwick,et al.  Automated Artifact Removal From the Electroencephalogram , 2013, Clinical EEG and neuroscience.

[148]  Vera Kaiser,et al.  What does clean EEG look like? , 2012, 2012 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[149]  Christopher J James,et al.  Independent component analysis for biomedical signals , 2005, Physiological measurement.

[150]  R. Kass,et al.  Automatic correction of ocular artifacts in the EEG: a comparison of regression-based and component-based methods , 2004 .

[151]  Danilo P. Mandic,et al.  Emd via mEMD: multivariate noise-Aided Computation of Standard EMD , 2013, Adv. Data Sci. Adapt. Anal..

[152]  R N Vigário,et al.  Extraction of ocular artefacts from EEG using independent component analysis. , 1997, Electroencephalography and clinical neurophysiology.

[153]  T. Sejnowski,et al.  Removing electroencephalographic artifacts by blind source separation. , 2000, Psychophysiology.

[154]  Sabine Van Huffel,et al.  Removal of Muscle Artifacts from EEG Recordings of Spoken Language Production , 2010, Neuroinformatics.

[155]  Bernhard Schölkopf,et al.  Nonlinear Component Analysis as a Kernel Eigenvalue Problem , 1998, Neural Computation.

[156]  Adrian Segall,et al.  Filtering of Muscle Artifact from the Electroencephalogram , 1979, IEEE Transactions on Biomedical Engineering.