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Classification of 4-class motor imagery EEG data with Common Sparse Spectral Spatial Pattern method

机译:用通用稀疏光谱空间模式方法对4类运动图像脑电数据进行分类

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Brain computer interface aims to provide a communication system with external media via thoughts. For this purpose, brain signals are acquired from the scalp by EEG device and processed for characterization. In this work, the classification of movement imagery EEG data has been studied for left hand, right hand, foot and tongue movement imagination cases. common spatial patterns (CSP) method and temporal filters have been used in classification and common sparse spectral spatial patterns (CSSSP) method has been tried on 4-class motor imagery data in order to improve the accuracy for classification.
机译:脑计算机接口旨在通过思想为通信系统提供外部媒体。为此,通过EEG设备从头皮获取脑部信号并进行处理以进行表征。在这项工作中,针对左手,右手,脚和舌头的运动想象情况研究了运动图像EEG数据的分类。为了提高分类的准确性,已经在分类中使用了常见的空间模式(CSP)方法和时间滤波器,并尝试对4类运动图像数据使用了常见的稀疏光谱空间模式(CSSSP)方法。

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