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Classifying EEG Signals in Single-Channel SSVEP-based BCIs through Support Vector Machine

机译:通过支持向量机对基于单通道SSVEP的BCIS进行分类的eEG信号

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Electroencephalography (EEG) headsets are wearable computing devices capable of recording electrical activity of the brain. These devices play a key role in the Brain-Computer Interfaces (BCIs) systems, i.e., systems capable of acquiring, processing and classifying EEG signals in order to control external devices such as wireless prosthetics. In spite of their crucial role, the current EEG headsets are very uncomfortable being composed of many wet electrodes. Hence, single-channel BCIs with dry electrodes are emerging like wearable devices more accepted by users. Unfortunately, this kind of device typically provides weaker and noisier signal that makes more challenging the classification task. This work is aimed at improving the quality of the classification of EEG signals, and in particular of Steady-State Visual Evoked Potentials (SSVEP), captured by single-channel EEG devices by using an evolutionary algorithm-based optimized version of Support Vector Machine (SVM). As shown by experimental results, the proposed approach improves on the state-of-the-art methods in terms of accuracy.
机译:脑电图(EEG)耳机是可穿戴计算设备,能够记录大脑的电活动。这些设备在大脑计算机接口(BCIS)系统中发挥着关键作用,即,能够获取,处理和分类EEG信号的系统,以控制诸如无线假肢等外部设备。尽管其作用是至关重要的,但目前的EEG耳机是非常不舒服的,由许多湿电极组成。因此,具有干电极的单通道BCIS正在像用户一样接受的可穿戴设备一样出现。遗憾的是,这种设备通常提供较弱和嘈杂的信号,使分类任务更具挑战性。这项工作旨在提高EEG信号分类的质量,特别是通过使用基于进化算法的支持向量机的展开算法捕获的稳态视觉诱发电位(SSVEP),由单通道EEG器件捕获( SVM)。如实验结果所示,所提出的方法在准确性方面提高了最先进的方法。

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