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Classifying eye and head movement artifacts in EEG signals

机译:对EEG信号中的眼睛和头部运动伪影进行分类

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Brain Computer Interfaces has some exciting prospects such as controlling devices at the speed of thought. However BCI technology is far from attaining this goal. A significant challenge the EEG-based system has is the interference of artifacts in the EEG generated by eye and head movement. This paper presents the use of machine learning techniques to classify artifacts in the EEG. Successful artifact classification was then be applied to improve existing artifact removal techniques. The experiment used a state-of-the-art EEG system to gather the classifier input. An eye tracker and motion sensor were also used to measure and provide the ground truth for the classification experiments. The data from these devices were captured using custom built software developed for this research. The classifiers tested showed potential to classify artifacts in the EEG when trained on a per-person basis. This research paves the way for further work to be carried out to explore subject-independent artifact classification.
机译:脑电脑接口有一些令人兴奋的前景,例如以思想速度控制设备。然而,BCI技术远未实现这一目标。基于EEG的系统具有重要挑战是眼睛和头部运动产生的脑电图中的伪影的干扰。本文介绍了使用机器学习技术对脑电图中的伪影进行分类。然后应用成功的工件分类来改善现有的伪影删除技术。该实验使用了最先进的EEG系统来收集分类器输入。眼罩和运动传感器也用于测量和提供分类实验的基础事实。使用为该研究开发的定制构建软件捕获来自这些设备的数据。测试的分类器显示在培训基础上训练时对脑电图的潜力进行分类。这项研究铺平了进一步工作的方式,以探索独立的伪影分类。

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