周 强,田鹏飞.基于迁移学习多层级融合的运动想象 EEG 辨识算法[J].电子测量与仪器学报,2021,35(12):174-181
基于迁移学习多层级融合的运动想象 EEG 辨识算法
EEG identification algorithm of motor imagination basedon multi-level fusion of transfer learning
  
DOI:
中文关键词:  运动想象脑电信号  卷积神经网络  迁移学习  多层级融合网络模型
英文关键词:motor imagination-EEG signal  convolutional neural network  transfer learning  multi-layers network fusion model
基金项目:陕西省科技计划项目(2019GY 090)、咸阳市科技计划项目(2017K02 06)资助
作者单位
周 强 1.陕西科技大学电气与控制工程学院 
田鹏飞 1.陕西科技大学电气与控制工程学院 
AuthorInstitution
Zhou Qiang 1.School of Electrical and Control Engineering, Shaanxi University of Science and Technology 
Tian Pengfei 1.School of Electrical and Control Engineering, Shaanxi University of Science and Technology 
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中文摘要:
      为了准确获取运动想象脑电信号的全局特征和个体间的共性特征,进而提高其分类准确率和模型鲁棒性,提出一种参 数共享迁移学习的融合卷积神经网络算法。 首先把源域上训练完成的网络逐层迁移至目标网络以获取最佳迁移层。 其次,在 迁移层后分别连接不同数量的卷积-池化块构成 4 个不同深度的卷积网络,并将其并行融合后连接分类器得到分类结果。 利用 BCI 竞赛 IV Datasets 2a 对提出方法进行实验分析。 结果显示,使用 100%和 50%样本时所有受试者的平均辨识率分别为 80. 85%和 78. 9%,验证了提出方法在全局特征提取上的有效性小样本问题上的优势。
英文摘要:
      In order to accurately obtain the global characteristics of motor imaging EEG signals and the common characteristics between individuals, and then improve its classification accuracy and model robustness, a fusion convolutional neural network algorithm with parameter sharing transfer learning is proposed. First, the trained model on the source domain is migrated layer by layer to the target network to obtain the best migration layers. Secondly, after the migration layers, different numbers of convolution-pooling blocks are connected to form four convolutional networks with different depths, and they are merged in parallel and finally the classification results are obtained through the classifier. Use the BCI competition IV Datasets 2a to conduct experimental analysis on the proposed method. The results show that the average recognition rate of all subjects when using 100% and 50% samples is 80. 85% and 78. 9%, respectively, which verifies the effectiveness of the proposed method on global feature extraction and the advantages of small sample problems.
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