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Feature selection and blind source separation in an EEG-based brain-computer interface

机译:基于EEG的脑机界面中的特征选择和盲源分离

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Most EEG-based BCl systems make use of well-studied patterns of brain activity. However, those systems involve tasks that indirectly map to simple binary commands such as "yes" or "no" or require many weeks of biofeedback training. We hypothesized that signal processing and machine learning methods can be used to discriminate EEG in a direct "yes"/"no" BCI from a single session. Blind source separation (BSS) and spectral transformations of the EEG produced a 180-dimensional feature space. We used a modified genetic algorithm (GA) wrapped around a support vector machine (SVM) classifier to search the space of feature subsets. The GA-based search found feature subsets that outperform full feature sets and random feature subsets. Also, BSS transformations of the EEG outperformed the original time series, particularly in conjunction with a subset search of both spaces. The results suggest that BSS and feature selection can be used to improve the performance of even a "direct," single-session BCl.
机译:大多数基于EEG的BCl系统都使用经过充分研究的大脑活动模式。但是,这些系统涉及间接映射到简单的二进制命令(例如“是”或“否”)的任务,或者需要进行数周的生物反馈培训。我们假设信号处理和机器学习方法可用于区分来自单个会话的直接“是” /“否” BCI中的EEG。脑电图的盲源分离(BSS)和光谱变换产生了180维特征空间。我们使用包裹在支持向量机(SVM)分类器周围的改进遗传算法(GA)搜索特征子集的空间。基于GA的搜索找到了优于完整特征集和随机特征子集的特征子集。而且,EEG的BSS转换性能优于原始时间序列,特别是结合两个空间的子集搜索。结果表明,即使是“直接”单会话BCl,BSS和功能选择也可以用于提高性能。

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