Decoding of visual-related information from the human EEG using an end-to-end deep learning approach
There is increasing interest in using deep learning approach for EEG analysis as there are still rooms for the improvement of EEG analysis in its accuracy. Convolutional long short-term (CNNLSTM) has been successfully applied in time series data with spatial structure through end-to-end learning. He...
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Zusammenfassung: | There is increasing interest in using deep learning approach for EEG analysis
as there are still rooms for the improvement of EEG analysis in its accuracy.
Convolutional long short-term (CNNLSTM) has been successfully applied in time
series data with spatial structure through end-to-end learning. Here, we
proposed a CNNLSTM based neural network architecture termed EEG_CNNLSTMNet for
the classification of EEG signals in response to grating stimuli with different
spatial frequencies. EEG_CNNLSTMNet comprises two convolutional layers and one
bidirectional long short-term memory (LSTM) layer. The convolutional layers
capture local temporal characteristics of the EEG signal at each channel as
well as global spatial characteristics across channels, while the LSTM layer
extracts long-term temporal dependency of EEG signals. Our experiment showed
that EEG_CNNLSTMNet performed much better at EEG classification than a
traditional machine learning approach, i.e. a support vector machine (SVM) with
features. Additionally, EEG_CNNLSTMNet outperformed EEGNet, a state-of-art
neural network architecture for the intra-subject case. We infer that the
underperformance when using an LSTM layer in the inter-subject case is due to
long-term dependency characteristics in the EEG signal that vary greatly across
subjects. Moreover, the inter-subject fine-tuned classification model using
very little data of the new subject achieved much higher accuracy than that
trained only on the data from the other subjects. Our study suggests that the
fine-tuned inter-subject model can be a potential end-to-end EEG analysis
method considering both the accuracy and the required training data of the new
subject. |
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DOI: | 10.48550/arxiv.1911.00550 |