2009 4th International IEEE/EMBS Conference on Neural Engineering 2009
DOI: 10.1109/ner.2009.5109381
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Detection and removal of ocular artifacts using Independent Component Analysis and wavelets

Abstract: In this paper a novel approach for ocular artifact (OA) removal is proposed in which a combination of Independent Component Analysis and wavelet-based noise reduction is utilized for detection and removal of OA. At the first stage, independent basis functions attributed to OA are computed using FastICA algorithm. This is followed by designing a wavelet basis function which is tuned to have sufficient similarity in its waveform to the independent basis functions of OA. We then utilize the designed wavelet for s… Show more

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Cited by 10 publications
(7 citation statements)
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“…Regardless of the application, preprocessing is required since the signal is very susceptible to noise. Several approaches have been used in the literature for data processing, such as Common Spatial Pattern (CSP) ( Yong, Ward & Birch, 2008 ), Wavelet transforms ( Kumar et al, 2009 ; Ghandeharion & Ahmadi-Noubari, 2009 ), and Independent Component Analysis (ICA) ( Delorme, Sejnowski & Makeig, 2007 ).…”
Section: Proposed Approach and Evaluation Scenariosmentioning
confidence: 99%
“…Regardless of the application, preprocessing is required since the signal is very susceptible to noise. Several approaches have been used in the literature for data processing, such as Common Spatial Pattern (CSP) ( Yong, Ward & Birch, 2008 ), Wavelet transforms ( Kumar et al, 2009 ; Ghandeharion & Ahmadi-Noubari, 2009 ), and Independent Component Analysis (ICA) ( Delorme, Sejnowski & Makeig, 2007 ).…”
Section: Proposed Approach and Evaluation Scenariosmentioning
confidence: 99%
“…Another method of the event detection (a saccade, a blink) is the wavelets transform [Ghandeharion & Ahmadi-Noubari (2009);Reddy et al (2010)]. The saccade and blink are well defined in time domain and they have a limited length in time.…”
Section: Singularity Processingmentioning
confidence: 99%
“…BSS and parallel factor analysis (PFA) are integrated to reject the EEG artifacts [8,9]. Wavelet transforms (WT) with independent component analysis (ICA) and statistical autoregressive moving average model have been used to reject the artifacts [10]. Pesin [11] demonstrates a novel approach to recognize and reject eye blink artifacts from EEG system based on an integration between wavelet technique and FastICA to expose the temporal position of eye blink and then remove it.…”
Section: Introductionmentioning
confidence: 99%