%A Mannan,Malik M. Naeem %A Jeong,Myung Y. %A Kamran,Muhammad A. %D 2016 %J Frontiers in Human Neuroscience %C %F %G English %K Electroencephalography,Electrooculography,ocular artifacts,Independent Component Analysis,Regression Analysis,median absolute deviation,Composite multi-scale entropy,kurtosis %Q %R 10.3389/fnhum.2016.00193 %W %L %M %P %7 %8 2016-May-03 %9 Methods %+ Myung Y. Jeong,Department of Cogno-Mechatronics Engineering, Pusan National University,Busan, South Korea,myjeong@pusan.ac.kr %# %! automatic identification and removal of ocular artifacts from EEG %* %< %T Hybrid ICA—Regression: Automatic Identification and Removal of Ocular Artifacts from Electroencephalographic Signals %U https://www.frontiersin.org/articles/10.3389/fnhum.2016.00193 %V 10 %0 JOURNAL ARTICLE %@ 1662-5161 %X Electroencephalography (EEG) is a portable brain-imaging technique with the advantage of high-temporal resolution that can be used to record electrical activity of the brain. However, it is difficult to analyze EEG signals due to the contamination of ocular artifacts, and which potentially results in misleading conclusions. Also, it is a proven fact that the contamination of ocular artifacts cause to reduce the classification accuracy of a brain-computer interface (BCI). It is therefore very important to remove/reduce these artifacts before the analysis of EEG signals for applications like BCI. In this paper, a hybrid framework that combines independent component analysis (ICA), regression and high-order statistics has been proposed to identify and eliminate artifactual activities from EEG data. We used simulated, experimental and standard EEG signals to evaluate and analyze the effectiveness of the proposed method. Results demonstrate that the proposed method can effectively remove ocular artifacts as well as it can preserve the neuronal signals present in EEG data. A comparison with four methods from literature namely ICA, regression analysis, wavelet-ICA (wICA), and regression-ICA (REGICA) confirms the significantly enhanced performance and effectiveness of the proposed method for removal of ocular activities from EEG, in terms of lower mean square error and mean absolute error values and higher mutual information between reconstructed and original EEG.