Evaluation criteria of biological artifacts removal rate from EEG signals

作者: Aysa Jafarifarmand , Mohammad Ali Badamchizadeh , Hadi Seyedarabi

DOI: 10.1109/ISIE.2014.6864597

关键词:

摘要: EEG is one of the most important bioelectrical signals that plays a vital role in investigation brain activities clinical applications as well Brain-Computer-Interface systems. The major facing obstacle are often affected by variety large signal contaminations or artifacts, which reduce their usefulness. Various approaches have been introduced to remove artifacts from signals, but since artifact-free practically not accessible comparison referent so precise evaluation artifact removal level possible, makes it impossible realize how useful obtained is. However, several metrics proposed measure success rate. criteria presented and analyzed this paper.

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