研究目的
Investigating unsupervised and effective removal of ocular artifacts (OA) from single-channel streaming raw EEG data for real-time applications.
研究成果
The study demonstrates that wavelet transform can be an effective tool for unsupervised OA removal from single-channel EEG data for real-time applications. The optimal combination for OA removal was found to be DWT with ST using coif3 or bior4.4 wavelet basis functions.
研究不足
The study focuses on single-channel EEG data and specific wavelet-based techniques for OA removal. The effectiveness of the methods may vary with different EEG systems or artifact types.
1:Experimental Design and Method Selection:
The study systematically evaluated the unsupervised wavelet transform (WT) decomposition technique for the effectiveness of OA removal for a single-channel EEG system. Two commonly used WT methods, Discrete Wavelet Transform (DWT) and Stationary Wavelet Transform (SWT), were applied with four WT basis functions (haar, coif3, sym3, and bior4.4) for OA removal with universal threshold and statistical threshold (ST).
2:4) for OA removal with universal threshold and statistical threshold (ST).
Sample Selection and Data Sources:
2. Sample Selection and Data Sources: A set of seven raw EEG datasets was analyzed. Data was collected from four subjects using a 14-channel referential montage EPOC headset at a sampling rate of 128 sps.
3:List of Experimental Equipment and Materials:
A 14-channel referential montage EPOC headset (Emotiv, Eveleigh, NSW, Australia) was used for EEG acquisition. Nuprep skin preparing gel (Weaver and Company, Aurora, CO) and mild abrasive strips were used for skin preparation.
4:Experimental Procedures and Operational Workflow:
Subjects were instructed to blink 9 times with a 5 s hiatus during the recording. Only AF3 channel data was used for analysis due to the prominence of OAs in the frontal lobe.
5:Data Analysis Methods:
Five performance metrics were utilized to quantify OA removal efficacy: correlation coefficients, mutual information, signal-to-artifact ratio, normalized mean square error, and time-frequency analysis.
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