2023 IEEE 8th International Conference on Recent Advances and Innovations in Engineering (ICRAIE), Kuala-Lumpur, Malezya, 2 - 03 Aralık 2023, ss.1-5
This study seeks to explore the success of the Xception convolutional
neural network and short-time Fourier transform in classifying EEG
signals with limited training samples using pre-trained deep transfer
learning. So far, most deep learning research has concentrated on
one-dimensional time series inputs. Two-dimensional inputs are another
excellent way of giving EEG signals to deep learning. This study used a
two-dimensional STFT-based method to transform EEG signals into images
and Xception for classification. BCI Competition IV dataset 2b, which
includes nine participants, was used to evaluate the performance. This
study is the first to report the STFT + Xception approach results for
classifying motor imagery signals. It achieved good results from a small
number of MIEEG data, averaging over 80% for nine subjects with a very
low standard deviation of 2.9% between subjects. Applying data
augmentation and training from scratch with more data can show more
successful results in the future.