两个脑袋胜过一个脑袋:一种改进EEG-ET数据分类的生物启发方法

Eric Modesitt, Ruiqi Yang, Qi Liu
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引用次数: 0

摘要

脑电数据分类是脑机接口(BCI)性能及其应用的重要组成部分。但由于其生物学性质和采集过程的复杂性,外界噪声往往会对EEG数据造成干扰。特别是在处理分类任务时,标准的脑电信号预处理方法从整个数据集中提取相关事件和特征。然而,这些方法平等地对待所有相关的认知事件,忽视了大脑随时间变化的动态本质。相比之下,我们受到神经科学研究的启发,使用一种将EEG数据的特征选择和时间分割相结合的新方法。当在EEGEyeNet数据集上进行测试时,我们提出的方法显着提高了机器学习分类器的性能,同时降低了它们各自的计算复杂度。
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Two Heads are Better than One: A Bio-inspired Method for Improving Classification on EEG-ET Data
Classifying EEG data is integral to the performance of Brain Computer Interfaces (BCI) and their applications. However, external noise often obstructs EEG data due to its biological nature and complex data collection process. Especially when dealing with classification tasks, standard EEG preprocessing approaches extract relevant events and features from the entire dataset. However, these approaches treat all relevant cognitive events equally and overlook the dynamic nature of the brain over time. In contrast, we are inspired by neuroscience studies to use a novel approach that integrates feature selection and time segmentation of EEG data. When tested on the EEGEyeNet dataset, our proposed method significantly increases the performance of Machine Learning classifiers while reducing their respective computational complexity.
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