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Classification of EEG signals using the Spatio-temporal feature selection via the elastic net

机译:使用弹性网的时空特征选择eEG信号的分类

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Effective classification of motor imagery electroencephalograph (EEG) data is an important challenge. Spatial filtering such as Common Spatial Pattern (CSP) and its variants are commonly used for this task. However, CSP effectiveness depends on the subject-specific frequency band. Even by optimally selecting a subject-specific frequency band, this method still fails for some subjects. On the other hand, some studies suggest that temporal features may discriminate classes more efficiently. This work proposes a hybrid method based on elastic net and Least Absolute Shrinkage and Selector Operator (LASSO) to optimally select between spatial and temporal features. This algorithm uses joint spatial and temporal features followed by an optimal combined feature selection scheme for each subject. Results show significant improvement for subjects whose spatial features failed to produce acceptable results and overall improvement over the combined data.
机译:有效分类的电动机图像脑电图(EEG)数据是一个重要的挑战。空间滤波,例如常见的空间模式(CSP)及其变体通常用于此任务。然而,CSP效率取决于主题特定频带。即使通过最佳地选择特定于对象特定的频带,即使某些科目仍然失败。另一方面,一些研究表明,时间特征可能更有效地区分类别。这项工作提出了一种基于弹性网和最小绝对收缩和选择器操作员(套索)的混合方法,以在空间和时间特征之间进行最佳选择。该算法使用关节空间和时间特征,然后是每个主题的最佳组合特征选择方案。结果表明,其空间特征未能产生可接受的结果和整体改进的主题,显着改善了组合数据。

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