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A novel multi-dimensional features fusion algorithm for the EEG signal recognition of brain's sensorimotor region activated tasks

机译:一种新型多维特征融合算法,用于大脑传感器区域激活任务的EEG信号识别

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Purpose Aiming at the shortcomings of EEG signals generated by brain's sensorimotor region activated tasks, such as poor performance, low efficiency and weak robustness, this paper proposes an EEG signals classification method based on multi-dimensional fusion features. Design/methodology/approach First, the improved Morlet wavelet is used to extract the spectrum feature maps from EEG signals. Then, the spatial-frequency features are extracted from the PSD maps by using the three-dimensional convolutional neural networks (3DCNNs) model. Finally, the spatial-frequency features are incorporated to the bidirectional gated recurrent units (Bi-GRUs) models to extract the spatial-frequency-sequential multi-dimensional fusion features for recognition of brain's sensorimotor region activated task. Findings In the comparative experiments, the data sets of motor imagery (MI)/action observation (AO)/action execution (AE) tasks are selected to test the classification performance and robustness of the proposed algorithm. In addition, the impact of extracted features on the sensorimotor region and the impact on the classification processing are also analyzed by visualization during experiments. Originality/value The experimental results show that the proposed algorithm extracts the corresponding brain activation features for different action related tasks, so as to achieve more stable classification performance in dealing with AO/MI/AE tasks, and has the best robustness on EEG signals of different subjects.
机译:目的针对大脑的感觉电流区域激活任务产生的EEG信号的缺点,如性能差,效率低,弱稳健性差,本文提出了一种基于多维融合功能的EEG信号分类方法。设计/方法/方法首先,改进的Morlet小波用于从EEG信号中提取频谱特征映射。然后,通过使用三维卷积神经网络(3DCNNS)模型从PSD地图中提取空间频率特征。最后,空间频率特征结合到双向门控复发单元(Bi-Grus)模型,以提取用于识别大脑的传感器区域激活任务的空间频率顺序多维融合特征。在比较实验中的发现,选择电动机图像(MI)/动作观察(AO)/动作执行(AE)任务的数据集以测试所提出的算法的分类性能和鲁棒性。此外,通过实验期间,还通过可视化分析了感觉电流区域上提取的特征和对分类处理的影响的影响。原创性/值实验结果表明,该算法提取不同动作相关任务的相应大脑激活特征,以便在处理AO / MI / AE任务时实现更稳定的分类性能,并具有对EEG信号的最佳稳健性不同的科目。

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