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A zero-training algorithm for EEG single-trial classification applied to a face recognition ERP experiment

机译:脑电单次分类零训练算法在人脸识别ERP实验中的应用

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This paper proposes a machine learning based approach to discriminate between EEG single trials of two experimental conditions in a face recognition experiment. The algorithm works using a single-trial EEG database of multiple subjects and thus does not require subject-specific training data. This approach supports the idea that zero-training classification and on-line detection Brain Computer Interface (BCI) systems are areas with a significant amount of potential.
机译:本文提出了一种基于机器学习的方法来区分人脸识别实验中两个实验条件的EEG单次试验。该算法使用多个受试者的单次EEG数据库进行工作,因此不需要特定于受试者的训练数据。这种方法支持零训练分类和在线检测脑计算机接口(BCI)系统是具有巨大潜力的领域的想法。

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