Abstract:Abstract:Focal EEG recognition can provide important reference value for epilepsy surgery. This paper proposes a focal EEG recognition algorithm based on deep network with transfer learning. Firstly, the continuous wavelet transform (CWT) is used to perform timefrequency analysis on the EEG signals and obtain the timefrequency map of the EEG signals. Then transfer learning is performed on the AlexNet model, and the network structure is adjusted to adapt to focal EEG recognition. The output of the seventh fully connected layer of the model is used as the characteristic presentation of the timefrequency images. Finally, the classification algorithms of SVM, BP, LSTM, SRC and LDA are used to classify the features. In this paper, based on the open source EEG dataset, the 10fold crossvalidation algorithm is adopted to verify the algorithm, the effects of the six classifiers are compared. The average specificity, sensitivity and accuracy of the SVM algorithm are 8807%, 8881% and 8844%, respectively, which proves the effectiveness of the method in focal EEG recognition. .txt