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Feature Extraction of EEG Signal upon BCI Systems Based on Steady-State Visual Evoked Potentials Using the Ant Colony Optimization Algorithm

机译:基于稳态视觉诱发电位和蚁群算法的BCI系统脑电信号特征提取

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This work presents the use of swarm intelligence algorithms as a reliable method for the optimization of electroencephalogram signals for the improvement of the performance of the brain interfaces based on stable states visual events. The preprocessing of brain signals for the extraction of characteristics and the detection of events is of paramount importance for the improvement of brain interfaces. The proposed ant colony optimization algorithm presents an improvement in obtaining the key features of the signals and the detection of events based on visual stimuli. As a reference model, we used the Independent Component Analysis method, which has been used in recent research for the removal of nonrelevant and detection of relevant data from the brain’s electrical signals and also allows the collection of information in response to a stimulus and separates the signals that were generated independently in certain zones of the brain.
机译:这项工作提出了使用群体智能算法作为优化脑电图信号的可靠方法,以基于稳定状态的视觉事件改善脑接口的性能。对脑信号进行预处理以提取特征和检测事件对于改善脑接口至关重要。所提出的蚁群优化算法对基于视觉刺激的信号关键特征获取和事件检测提供了一种改进。作为参考模型,我们使用了独立成分分析方法,该方法在最近的研究中用于从大脑的电信号中去除不相关的数据和检测相关的数据,并且还可以响应刺激而收集信息并将其分离。在大脑某些区域独立产生的信号。

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