首页> 外文会议>2012 20th Iranian conference on electrical engineering >Automatic minimization of eye blink artifacts using fractal dimension of independent components of multichannel EEG
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Automatic minimization of eye blink artifacts using fractal dimension of independent components of multichannel EEG

机译:使用多通道脑电图独立分量的分形维数自动最小化眨眼伪像

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摘要

Eye blink artifact is an important artifact in EEG recordings that should be corrected before any other analysis in clinical or brain computer interface purposes. This artifact cannot be removed by frequency selective filters, because of its frequency overlap with EEG. Independent component analysis (ICA) is an effective method that can separate ocular source from brain sources. The main problem in ICA is to recognize components related to ocular artifact source, automatically. In recent years, some methods have been proposed to recognize these components based on some features of independent components. In this work, we use Higuchi's fractal dimension of independent components, because of the difference between fractal structure of the ocular and brain sources. The method has been tested by EEG data recorded for diagnose attention deficit/hyperactivity disorder (ADHD) in children. The results show that the proposed method is appropriate for automatic minimization of eye blink artifact.
机译:眨眼伪像是EEG记录中的重要伪像,应在临床或脑部计算机接口目的进行任何其他分析之前予以纠正。由于该伪影的频率与EEG重叠,因此无法通过频率选择滤波器将其删除。独立成分分析(ICA)是一种可以将眼源与脑源分开的有效方法。 ICA中的主要问题是自动识别与人工眼源有关的组件。近年来,已经提出了一些基于独立组件的特征来识别这些组件的方法。在这项工作中,由于眼和脑源的分形结构之间的差异,我们使用了Higuchi独立组件的分形维数。该方法已通过记录的EEG数据进行测试,可用于诊断儿童的注意力缺陷/多动障碍(ADHD)。结果表明,该方法适用于眨眼伪像的自动最小化。

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